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Article

Integration of Ulva ohnoi in a Recirculating Aquaculture System for Gilthead Seabream (Sparus aurata) and Its Use as Feed for Sea Urchin (Paracentrotus lividus) Production: A Contribution to Circular and Sustainable Aquaculture Practices

by
João Araújo
1,*,
Ana Catarina Carvalho
1,
Ana Carolina Matias
1,
Maria Carolina Ribeiro
1,
Florbela Soares
1,2 and
Pedro Pousão-Ferreira
1,2
1
IPMA—Portuguese Institute for the Ocean and Atmosphere, EPPO—Aquaculture Research Station, 8700 Olhão, Portugal
2
S2AQUACOLAB—Collaborative Laboratory on Sustainable and Smart Aquaculture, EPPO—Aquaculture Research Station, 8700 Olhão, Portugal
*
Author to whom correspondence should be addressed.
Fishes 2025, 10(9), 447; https://doi.org/10.3390/fishes10090447
Submission received: 1 July 2025 / Revised: 25 August 2025 / Accepted: 27 August 2025 / Published: 3 September 2025

Abstract

This study evaluated the performance of a recirculating aquaculture system (RAS) integrated with macroalgae (Ulva ohnoi) cultivation and sea urchin (Paracentrotus lividus) feeding, in a multi-trophic aquaculture approach. This system aimed to enhance sustainability through water bioremediation by macroalgae and valorization of the algal biomass as echinoderms feed. Over a 180-day trial, biomass production of U. ohnoi remained stable, with daily growth rates ranging from 7.4 to 24.4%. Statistical analyses (PCA and GAM) indicated no significant linear or non-linear relationship between macroalgae growth and environmental parameters (temperature, radiation, photoperiod). A theoretical estimate of nutrient production showed fairly stable values that do not statistically explain biomass production variation, highlighting the species’ adaptability. Sea urchins fed with fresh U. ohnoi showed regular growth, supporting the nutritional suitability of this macroalgae. For fish (Sparus aurata), no significant differences in growth or feed conversion ratio were observed between systems with and without algae. Parasitological monitoring revealed lower parasite loads and egg deposition in tanks in recirculation with U. ohnoi during certain periods, suggesting a potential role of macroalgae in reducing monogenean propagation. These findings underscore the feasibility of integrating Ulva cultivation into RAS, contributing to circular aquaculture models with improved sustainability and resource efficiency.
Key Contribution: This study presents an integrated RAS system that includes fish (Sparus aurata), sea urchins (Paracentrotus lividus), and macroalgae (Ulva ohnoi). It promotes sustainable biomass use and a circular nutrient economy. Furthermore, adding macroalgae reduced the parasite load in fish, demonstrating its potential to improve the health of aquaculture animals.

Graphical Abstract

1. Introduction

Global fisheries and aquaculture production reached a record high of 223.2 million tonnes in 2023, comprising 185.4 million tonnes of aquatic animals and 37.8 million tonnes of algae [1]. China remains the world’s largest producer, accounting for over 60% of the total output, followed by other major Asian producers such as India, Indonesia, and Vietnam. Finfish account for 90.2% of global aquaculture production, with the majority being freshwater species. Although seaweed production is significantly lower in volume compared to finfish, it plays a critical role in aquaculture, as virtually all macroalgae are cultivated within this sector. Projections suggest that by 2030, aquaculture will supply 53% of global aquatic production, meeting approximately 59% of global demand for aquatic food products [2]. The growing contribution of aquaculture to global food security highlights the need not only to maintain current production levels but also to invest in the quality, diversity, and environmental sustainability of aquaculture systems.
As the aquaculture industry expands, concerns about waste discharge, resource efficiency, and environmental sustainability are increasingly pressing [3]. Intensive aquaculture operations have been associated with antibiotic contamination, eutrophication, land degradation, and various other ecological impacts [4]. Several studies have evaluated the environmental consequences of different aquaculture systems, particularly intensive ones such as shrimp farming in mangrove areas [5,6], salmon farming in coastal zones [7,8], and carp farming in inland water bodies [9]. Moreover, many aquaculture systems are highly sensitive to environmental fluctuations and are thus, vulnerable to the effects of climate change.
In response to these challenges, recirculating aquaculture systems (RASs) have emerged as a promising adaptive strategy. These systems continuously treat and reuse water, removing ammonia and particulate waste materials through mechanical and biological filtration. RAS technologies eliminate solid waste, convert ammonia and nitrite to nitrate, remove CO2, regulate pH, control microbial populations, and maintain adequate oxygenation [3,10,11]. Variations in RAS design consider factors such as species requirements, stocking densities, water exchange rates, and system components [10,12,13].
One of the most promising and sustainable approaches within RAS is the implementation of integrated multi-trophic aquaculture (IMTA). In this system, fed organisms (e.g., fish or shrimp) are co-cultured with extractive species such as bivalves (which absorb organic particulates) and macroalgae (which assimilate dissolved nutrients), creating a more balanced and synergistic biological system [14]. The waste produced by one trophic level becomes a resource for another, enhancing nutrient recycling, improving water quality, and increasing overall productivity. IMTA systems can generate multiple value-added products, reduce environmental impacts, and promote economic resilience for producers [15].
Combining IMTA with RAS technology (multi-trophic RAS) further strengthens the sustainability and circularity of aquaculture. In this context, macroalgae not only serve as effective bioremediators but can also be used as feed ingredients for low-trophic level organisms such as sea urchins, which are highly valued for their edible gonads, particularly in Asian markets. The interest in aquaculture-based production of sea urchins has grown significantly in recent years [1,16,17].
Macroalgae of the Ulva genus has been identified as particularly suitable candidates for integration in multi-trophic RAS. Ulva contributes to water quality by increasing pH and oxygen levels, lowering CO2 concentrations, and aiding in the removal of ammonia and nitrates [18]. Moreover, it provides a balanced nutritional profile for sea urchins, supporting good growth and survival rates throughout the cultivation period. Nutritionally, Ulva is notable for its high content of protein, minerals, dietary fiber, and omega-3 fatty acids [19,20,21]. Additionally, its bioactive compounds, such as ulvans and polyphenols, have shown potential to improve immune function and reduce susceptibility to parasitic infections in fish, thus contributing positively to overall fish health [22,23,24].
As aquaculture expands to meet rising seafood demand and to reduce pressure on wild stocks, production systems have become increasingly intensive, often involving higher stocking densities, limited water renewal, and frequent handling of fish [25]. These conditions elevate physiological stress in farmed fish, compromising their immune response and increasing vulnerability to infectious agents. Consequently, parasitic outbreaks have become a frequent and persistent challenge in intensive aquaculture environments [25,26].
Parasitic infections now rank among the most pressing concerns for fish health and farm productivity, with some parasites causing substantial and lasting impacts across aquaculture sectors worldwide [27,28]. Within this context, monogenea have emerged as particularly problematic, given their high transmission potential and significant pathogenic effects on high-value species such as gilthead seabream (Sparus aurata) [25,29,30].
Monogenea are ectoparasitic flatworms with a direct life cycle that includes three key stages: resistant (eggs), infective (free-swimming larvae), and pathogenic (attached juveniles/adults) [29]. Adult monogeneans release eggs into the water column, which frequently become entangled on fibrous surfaces within aquaculture systems, allowing them to persist and maintain recurring infection cycles [28,31]. Once developed, the larvae hatches and must quickly locate and attach to a suitable host, typically targeting the gills, skin, or fins, where they cause direct tissue damage and facilitate secondary infections, particularly under intensive rearing conditions [32,33].
S. aurata, one of the most economically important marine species cultivated in Europe [2], is especially susceptible to monogenean infections, which represent a significant health and welfare challenge in both hatchery and grow-out phases [34,35]. Environmental factors, especially water temperature, are known to influence infection dynamics. Warmer conditions accelerate parasite development and enhance transmission rates [36] but outbreaks can also occur during colder months due to host immunosuppression [37].
In the search for effective, sustainable parasite control strategies, macroalgae-derived bioactive compounds have gained increasing attention. These natural substances exhibit antimicrobial, anti-inflammatory, and antiparasitic properties, offering promising eco-friendly alternatives to conventional chemical treatments [27,28]. Their antiparasitic mechanisms may include the inhibition of parasite adhesion to host tissues or direct toxicity to parasite larvae or adults [27,38]. When integrated into multi-trophic RAS systems, macroalgae such as U. ohnoi may contribute not only to water bioremediation and nutritional enrichment, but also to the health protection of co-cultured species, including gilthead seabream.
Recirculating aquaculture systems (RASs) coupled with integrated multi-trophic aquaculture (IMTA) demonstrate significant potential in alignment with the European Union’s strategic objectives for zero waste and circular economy [39]. However, assessing their applicability and economic viability is essential to ensuring that these practices become financially sustainable.
The aim of this study is to evaluate the performance of a multi-trophic RAS system combining gilthead seabream (S. aurata) and macroalgae (Ulva ohnoi), focusing on three main aspects: (i) the productivity of Ulva within the system; (ii) the suitability of cultivated U. ohnoi as a feed component for sea urchins (Paracentrotus lividus); and (iii) the potential impact of this integrated system on the health condition of the fish.

2. Material and Methods

2.1. Integrated Recirculation System (RAS)

In this study, a recirculating aquaculture system (RAS) was tested for the integrated production of fish (Sparus aurata) and macroalgae (Ulva ohnoi), with the macroalgal biomass used as feed for sea urchins (Paracentrotus lividus) cultured independently from this system. To meet the objectives of this study, two identical and autonomous RAS units were assembled (Figure 1)
In the first phase of this study (macroalgae and sea urchin production), only one RAS unit was used to collect data on macroalgae productivity and its application in sea urchin diets. In the second phase (impact of integrated macroalgae production on fish health and welfare), the second RAS unit was used, in which the macroalgae cultivation circuit was deactivated.
Each RAS comprised two 3 m3 conical-bottom fiberglass tanks for fish rearing, eight 0.2 m3 cylindrical plastic tanks (90 cm tall and 54 cm in diameter) for macroalgae cultivation, a combined bio-mechanical filtration unit, and a foam fractionator (protein skimmer).
In each system, the two fish tanks received water from the filtration unit, with an average renewal rate of approximately 30% per hour. Water exited from the bottom of each tank and was regulated by a standpipe system controlling the water column height. Effluent from the fish tanks was directed through a network of PVC pipes into the filtration unit.
Upon entering the filtration tank, the water flowed through a cascade-based mechanical filtration stage composed of a poly-fiber filter pad and a layer of reticulated aquatic filter foam. Within the same reservoir, the water circulated through a biological filter consisting of bio-balls and was oxygenated via diffused aeration using air stones.
Each filtration tank was equipped with a water inlet valve connected to the main reservoir of the facility. The opening of this valve was controlled by a float switch installed inside the filtration tank, ensuring automatic compensation for water losses within the system.
Following filtration, the water was pumped into the macroalgae cultivation circuit, which also acted as a bioremediation stage for improving water quality. Each RAS included nine algae culture tanks with a water renewal rate of approximately 320% per hour. These tanks were strongly aerated by perforated PVC structures affixed to the bottom, allowing for uniform air bubble release. Water flow through the algae tanks occurred in series.
After passing through the algae tanks, the water was recirculated back to the bio-mechanical filtration unit, completing the loop. Finally, each system was equipped with a foam fractionator (protein skimmer), operating with an independent water pump, to remove dissolved organic compounds.

2.2. Macroalgae and Sea Urchin Production

In the first part of this work, the analysis focused on the production of macroalgae and their use as exclusive food for sea urchins. Only one RAS unit was used, with eight macroalgae production tanks and two fish production tanks. The sea urchins were cultivated in a system independent of the RAS. This first trial phase lasted 187 days.

2.2.1. Macroalgae

In the initial phase, two species of marine macroalgae were selected: Ulva ohnoi and Gracilaria gracilis. However, G. gracilis was found to be unsuitable for the developed system, and therefore only U. ohnoi was cultured. The initial biomass of U. ohnoi was collected from earthen ponds at EPPO (Aquaculture Research Center) and was subjected to a cleaning process to remove sediment and associated organisms. The identification of this macroalgae was previously carried out by the Molecular Biology Lab at S2AQUA CoLab (Olhão, Portugal).
Each 200 L tank was inoculated with 1 kg of U. ohnoi. Every ten days, a sampling procedure was conducted, consisting of harvesting and weighing the biomass from each tank. After tank cleaning, the tanks were reinoculated with 1 kg of fresh macroalgae biomass. The remaining macroalgae were used as feed for sea urchins. Water flow rates in each tank were periodically measured and adjusted as needed.

2.2.2. Sea Urchin Rearing and Feeding Protocol

A total of 210 sea urchins (Paracentrotus lividus) with an initial average weight of 14.82 ± 1.29 g and a test diameter of 36.84 ± 1.27 mm were selected for this study. All individuals were hatchery-born at EPPO facilities from F1-generation broodstock. The spawning induction and larval rearing protocols are described in Araujo et al. (2023) [20].
The sea urchins were distributed into six plastic boxes (0.57 × 0.38 × 0.08 m), which were placed within two fiberglass raceway-type tanks containing approximately 300 L of water (working volume). These tanks were located indoors at the hatchery building and operated under continuous water flow, with aeration provided by air stones. Environmental parameters, including temperature and dissolved oxygen, were monitored twice daily (morning and afternoon) using a portable multiparameter probe (HI-9142, Hanna instruments, Bedfordshire, UK)
Sea urchins were fed exclusively with macroalgae cultivated in the RAS developed for this study. Feeding was carried out ad libitum, with the availability of algae in each box checked daily. Whenever algae were scarce or absent, the boxes were temporarily removed for cleaning, and approximately 100 g of fresh macroalgae was added. This quantity was adjusted based on the consumption observed in the preceding days.

2.2.3. Sea Bream Cultivation Protocol

The RAS unit used in the first part of the work (macroalgae and sea urchin production) included the two sea bream tanks described in Section 2.1. At this stage, 150 fish were placed in each tank, resulting in a stocking density of 16.33 kg·m−3. The fish were reared at EPPO facilities and originated from two separate spawns, one 311 days old and the other 313 days old at the time of introduction into the RAS. During the trial, fish were fed a commercial diet formulated for sea bream at a daily feeding rate of 0.94%. Pellet size was adjusted over time according to fish growth.

2.2.4. Biometric Sampling

For the biometric sampling of sea urchins, weight and test diameter were considered. Weighing was conducted with a KERN PRS/PRJ (Balingen-Frommern, Germany) precision and analytical balance. To measure the test-diameter, the sea urchins were photographed next to a ruler, and the pixel-centimeter conversion was performed using ImageJ software (v1.54.q). An analytical scale with an accuracy of 0.1 g was used to weigh the fish and macroalgae. The length of the fish was measured using an ichthyometer ruler.

2.2.5. Environmental Parameters and Sampling Procedures

Environmental parameters were monitored daily in the RAS and sea urchin rearing systems. Temperature (°C), dissolved oxygen (mg/L), and oxygen saturation (%) were measured twice daily using a multiparameter probe(HI9142, Hanna instruments, Bedfordshire, UK). Global radiation data were obtained from the IPMA meteorological station located at Faro Airport, approximately 12 km from the EPPO facilities. Raw data were processed by technical staff to generate daily total global radiation values (MJ/m2/day). Assuming that around 45–50% of total solar radiation falls within the 400–700 nm range, global radiation values were converted to photosynthetically active radiation (PAR). The daily photon flux available for photosynthesis was estimated by calculating the daily light integral (DLI, mol photons m−2 d−1) with a conversion factor of 2.1 mol MJ−1. Supplementary Table S1 displays the entire dataset of estimated PAR values. For each algae sample, pH (Fisher Scientific, Waltham, MA, USA) and ammonia (NH3) concentrations were measured using Salifert colorimetric test kits (Duiven, The Netherlands) to ensure values remained below 0.05 mg/L. Due to the nature of the test, ammonia measurements were primarily used to verify compliance with maximum recommended levels for gilthead sea bream culture. However, theoretical models were used to estimate the excretion of phosphorus and nitrogen and thus assess the relationship between nutrient production and macroalgae production.

2.3. Impact of Integrated Macroalgae Production on Fish Health and Welfare

The second part of this work focused on the impact of integrating macroalgae into an RAS system. Two RAS units were used, differing in whether they integrated a macroalgae production circuit. System A consisted of 2 tanks with fish (S. aurata), 8 macroalgae production tanks (U. ohnoi), a filtration unit and skimmer. System B consisted only of 2 fish tanks, a filtration unit, and a skimmer. System B therefore did not include a macroalgae circuit. In each system, 110 sea breams were placed in each tank, giving an initial density of 16.9 kg/m3 for system A and 17.2 kg/m3 for system B. The average initial weight of the fish was 232.1 ± 0.04 g. The feeding protocol was the same as in the previous trial. For this work, the periodic collection and weighing of the U. ohnoi macroalgae was maintained.
The protocol for monitoring environmental parameters such as temperature, dissolved oxygen, and oxygen saturation in the water was also maintained.

Fish Welfare: Ectoparasite Analysis

Seven sampling points were established to evaluate the presence of parasite eggs in the system with and without macroalgae. Cotton strips, with an area of 12 cm2, were fixed to the water outlet for five days in exactly the same position in the four tanks, to facilitate the collection of parasites eggs. After this period, the strips were removed and stored in seawater to preserve the eggs until quantification analysis [25]. The eggs attached to the strips were observed under a stereomicroscope SMZ1000c (Nikon, Tokyo, Japan) and counted manually. The fish’s parasite charge was also analyzed three times during the experiment. At each sampling point (from systems A and B), 3 fish were randomly caught from each tank and sacrificed by an incision in the spinal column. After the fish died, the two gill arches on the left side were removed and observed under an optical microscope Nikon ECLIPSE (Nikon, Tokyo, Japan) to quantify the parasites. The level of infection was determined based on the three parameters described by Bush et al. (1997) [40].
Prevalence   ( % ) = N u m b e r   o f   I n f e c t e d   F i s h N u m b e r   o f   F i s h   A n a l y s e d × 100
Mean   Intensity = T o t a l   N u m b e r   o f   P a r a s i t e s N u m b e r   o f   I n f e c t e d   F i s h
Mean   Abundance = T o t a l   N u m b e r   o f   P a r a s i t e s N u m b e r   o f   F i s h   A n a l y s e d

2.4. Data Processing

2.4.1. Macroalgae and Sea Urchin Production

In order to statistically compare the production of macroalgae biomass at different times of the experiment, Kruskal–Wallis ANOVA analyses and Dunn’s test for multiple comparisons were carried out). These analyses were carried out using SigmaPlot software (v14.0).
To evaluate the influence of environmental factors on algal biomass production, two complementary statistical approaches were applied: Generalized Additive Models (GAMs) and Principal Component Analysis (PCA).
The GAM was used to model the relationship between biomass gain (%) as the response variable and three environmental predictors: accumulated radiation, mean photoperiod, and mean water temperature. A GAM with smoothing splines was fitted using the pyGAM library in Python (version 3.x), allowing for flexible, non-linear relationships between predictors and the response. Model performance was assessed using the pseudo-R2 and Akaike Information Criterion (AIC), and the smooth functions were visualized to interpret the individual effects of each predictor [41].
To explore patterns of covariation among environmental variables and their association with biomass, a PCA was performed using the scikit-learn package (v1.3.0.) The variables were first standardized (zero mean, unit variance) before PCA computation. The first two principal components (PC1 and PC2) were retained for interpretation and visualization. A biplot was used to project the original variables, and biomass values were overlaid as a color gradient to assess whether any patterns aligned with principal environmental gradients [42].
All GAM and PCA statistical analyses were performed in Python using JupyterLab software (v4.0).
Based on the nutrient input through feed and the retention of nutrients in fish biomass, a mass balance approach was used to estimate the amount of nitrogen and phosphorus excreted by fish in the RAS system [43]. According to this concept, the amount of nutrients expelled into the water is equal to the difference between the amount consumed through feed and the amount retained during fish growth. The amount of crude protein and phosphorus in the feed, as well as the total amount delivered throughout each session, were noted.
Nutrient excretion was calculated as follows:
N   e x c r e t e d   =   F e e d   ( g )   ×   ( P r o t e i n % / 100 )   ×   ( 1     N   r e t e n t i o n _ r a t e )
P   e x c r e t e d = F e e d _ ( g ) × ( P h o s p h o r u s % / 100 ) × ( 1 P   r e t e n t i o n _ r a t e )
Nitrogen and phosphorus retentions were calculated according to the following equations:
R e t e n t i o n   ( % )   =   ( N   o r   P   g a i n e d   i n   f i s h / N   o r   P   s u p p l i e d   i n   d i e t )   ×   100
To calculate excretion, protein and phosphorus content values (16% and 1.3%) obtained by [44] were used.
In aquaculture studies, this method has been frequently utilized to assess the potential for nutrient recycling and to quantify nutrient loading in land-based systems. To analyze possible correlations between nutrient excretion and macroalgae production, scatter plots and person analysis were generated through Python using JupyterLab (v4.0).
To understand how sea urchins growth fed by integrated macroalgae U. ohnoi raised into the RAS system and, also how this macroalgae diet influenced the growth and quality of their gonads, the daily intake rate (DIR) (%), feed conversion rate (FCR), specific growth rate (SGR) (% day−1), and gonadossomatic index (GSI) (%) data were obtained using formulas described below and based on Zhao et al. (2024) [45], Lourenço et al. (2020) [46], Araújo et al. (2023) [20], and Araújo et al. (2024) [47], respectively. In these formulas, “Total Daily Feed given” corresponds to the total macroalga given daily in considered time (period of days) (76, 150, and 175 days). The Initial Wet weight corresponds to 0 days, and the Final Wet weight corresponds to 76, 150, or 175 days.
DIR   ( % ) ) = T o t a l   D a i l y   f e e d   g i v e n   ( g ) N u m b e r   o f   s e a   u r c h i n s   ×   N u m b e r   o f   d a y s A v e r a g e   o f   I n i t i a l   a n d   F i n a l   T o t a l   w e t   w e i g h t   o f   s e a   u r c h i n s   ( g )   ×   100
FCR = T o t a l   D a i l y   F e e d   g i v e n   ( g ) W e t   w e i g h t   g a i n   g
SGR   ( %   day 1 ) = l n   F i n a l   W e t   w e i g h t l n   ( I n i t i a l   W e t   w e i g h t ) N u m b e r   o f   d a y s   ×   100
GSI   ( % ) = G o n a d   w e t   w e i g h t   ( g ) T o t a l   w e t   w e i g h t   ( g )   ×   100
In addition, to analyze how sea urchin growth is influenced by being fed U. ohnoi produced in the conditions of this study, graphics were obtained that illustrate how wet weight and test diameter of sea urchin varied with water temperature.

2.4.2. Fish Production and Ectoparasite Analysis

To analyze how the presence or absence of integrated macroalgae in an RAS system affects the growth and health and wellness of studied fish (S. aurata), the daily intake rate (DIR) (%), feed conversion rate (FCR), specific growth rate (SGR) (% day−1), and condition factor (CF) (g cm−3) (following Fulton’s K-index) were calculated in the presence and absence of macroalgae, whose formulas, based on Bonaldo et al. (2010) [48], are described below. The number of days and final weight over a period of time (days) since the data from the first biometric sampling (0 days), corresponded to 43 and 65 days.
DIR   ( % ) = T o t a l   D a i l y   f e e d   g i v e n   ( g ) A v e r a g e   F i s h   B i o m a s s × N u m b e r   o f   d a y s × 100
FCR = T o t a l   D a i l y   F e e d   g i v e n   ( g ) W e i g h t   g a i n   ( g )
SGR   ( %   day 1 ) = ln ( F i n a l   W e i g h t ) ln ( I n i c i a l   W e i g h t ) N u m b e r   o f   d a y s × 100
( CF )   ( g   cm 3 ) = W e i g h t   T o t a l   l e n g h t 3 × 100
Statistical analysis on parasite analysis was performed with a significance level of p < 0.05, where the normality test (Shapiro–Wilk) was checked and significant differences between legion stage levels were analyzed by one-way ANOVA with Tukey’s post hoc test. All statistical analyses were performed using GraphPad Software (v9.0).

2.5. Use of Artificial Intelligence Assistance

To support the statistical analysis, particularly in the implementation of complex procedures such as Generalized Additive Models (GAM) and Principal Component Analysis (PCA), the JupyterLab environment was used in combination with Python libraries (v3.10). During this process, generative artificial intelligence (AI) tools (ChatGPT5, OpenAI, 2024) were consulted to assist in writing, adapting, and troubleshooting Python code. All AI-generated code was reviewed and validated by the authors before application to ensure methodological rigor and relevance to the study objectives.

3. Results

3.1. First Phase: Macroalgae and Sea Urchin Production

3.1.1. Macroalgae Production

Macroalgae production in the first part of this study took place between 24 September and 14 March of the following year, representing 170 days of cultivation, covering the autumn and most of the winter seasons. According to the Köppen–Geiger climate classification, the study area in the Algarve region is characterized as Csa, indicating a temperate climate with hot, dry summers and mild, wet winters. This classification is based on long-term climatological data provided by the Portuguese Institute for Sea and Atmosphere (IPMA).
Figure 2 shows the variation in macroalgae biomass production during the experiment period. It can be seen that production varied over time, starting at a maximum of 24.4% in the first sample, and then fluctuating between a minimum of 7.4% and a maximum of 16.4%. The period with the lowest production was in January, when U. ohnoi production never reached 10%.
Comparison of biomass production across sampling dates indicated that there are significant differences (Kruskal–Wallis ANOVA, p < 0.001). Table 1 shows the pairs of samples with significant differences (Dunn’s Method, p > 0.05). To facilitate analysis, the sampling points are shown in dates. This confirms that the first sample (4 October), was the one that stood out the most, due to its high production.
For this work, data were collected on average daily water temperature (°C), photoperiod (hours of light per day), and global radiation (MJ·m2), using the average values for each sampling period.
Figure 3 shows scatter plots to assess the relationship between the three environmental parameters recorded and macroalgae production in the system. The graph on the left shows that even with large differences in radiation, biomass varied little, suggesting a weak relationship. Finally, the graph on the right shows no clear linear relationship between macroalgae production and temperature. The scatter plots between biomass and each environmental variable did not show any strong linear trends.
The structure and variability of the environmental data (water temperature, mean photoperiod, and accumulated global radiation) over the sampling periods were investigated using Principal Component Analysis (PCA) (Figure 4). With PC1 explaining 73.2% and PC2 explaining 24.0% of the variance, the first two principal components accounted for a significant amount of the total variance. Temperature and photoperiod were found to be closely aligned with PC1 in the biplot, indicating a strong seasonal gradient and possible collinearity between these variables. PC2 was more closely linked to accumulated radiation, suggesting a partially independent contribution to total variance. No distinct directional trends or clusters were visible when biomass values were displayed as a grayscale gradient in the PCA space. This implies that there was little correlation between biomass production and PCA’s dominant environmental gradients.
The impact of temperature, photoperiod, and accumulated radiation on biomass gain (%) was evaluated using a Generalized Additive Model (GAM). The model displayed flat or weakly undulating response curves across the range of values and included smooth functions for each predictor (Figure 5). With an AIC of 132.84 and a pseudo-R2 of −0.066, the model’s overall performance was mediocre. According to these metrics, the biomass variation seen in the dataset was mostly independent of the three environmental variables under investigation, and none of the environmental predictors exerted a significant non-linear effect on biomass. The PCA, which also demonstrated that biomass gain was not clearly aligned with any dominant environmental axis, agrees with these findings.
Figure 6 shows the correlation between the estimated theoretical values of nutrient excretion and macroalgae production, considering time intervals of 10 days. In the graph on the left, it is possible to see that nitrogen excretion varied between 138.4 and 297.8 g. In the graph on the right, minimum and maximum phosphorus excretion values of 15.5 g and 33.4 g, respectively, can be seen. Through Pearson’s analysis, a positive but very weak correlation is seen between the variation in the excretion of these nutrients and the production of macroalgae biomass. For nitrogen, the Pearson correlation value was 0.627 with a p-value of 0.3177. For nitrogen, these values were 0.267 and 0.3183, respectively.

3.1.2. Sea Urchin Production

In terms of test diameter, there were different periods of growth, the most significant being between days 39 and 76, corresponding to the end of autumn (Figure 7). This period also corresponds to a drop in the temperature of the growing water. From day 76 onwards, growth slows down and becomes practically constant until day 150, with a slight increase observed until the end of the test. Regarding total weight, there was a similar trend to the variation in diameter. The biggest increase in weight was also at the end of autumn. Thereafter, there were slowdowns in the following samples.
Table 2 presents data on several nutritional and developmental parameters during the cultivation of sea urchins (P. lividus) fed with macroalgae produced in the RAS system. It can be seen that sea urchins exhibited a higher rate of ingestion and conversion of food into biomass at the beginning and end of this study, coinciding with the period of highest temperature in the culture water. Growth, on the other hand, peaked at 76 days, gradually decreasing throughout the study period. The gonadosomatic index was determined at the beginning and end of this study, with a higher value at the beginning compared to the end point.

3.2. Second Phase: Analyzing Fish Welfare

3.2.1. Fish Growth, Condition, and Nutrition Indices

For 65 days, sea bream (S. aurata) were cultivated in the integrated RAS system (with macroalgae) and in the simple RAS system (Table 3). Over time, the density of the two systems increased despite the reduction in the number of fish, the result of sacrificing fish at sampling times. In general, there were no major differences in the indices used to monitor farming performance. The daily intake ratio remained practically the same in both systems and between the two samplings (days 43 and 65). The SGR index was practically the same in both systems, and in both cases, there was a slight reduction between samplings. The FCR values were also very similar, although there were opposite trends when comparing the two systems.

3.2.2. Ectoparasite Analysis

The ectoparasites identified belonged to the class Monogenea, a group of ectoparasites commonly found in aquaculture systems. Parasitological parameters varied between systems A (with macroalgae) and B (control) across the three sampling dates.
At the first sampling point (10 April), the prevalence was 100% in both systems (Figure 8b), indicating that all sampled fish were infected. The mean number of parasites per gill arch and the mean intensity of infection did not differ significantly between systems (Figure 8a,c). The mean abundance—defined as the total number of parasites divided by the total number of fish sampled—followed a similar pattern (Figure 8d), with comparably high values in both groups.
At the second sampling point (6 May), there was a marked reduction in parasite load in system A. Prevalence dropped to 50%, whereas system B maintained a higher prevalence of 83% (Figure 8b), suggesting a potential mitigating effect of macroalgae presence. The mean number of parasites per gill was significantly lower in system A (0.58 ± 0.8), while in system B, the reduction was modest and not statistically significant (1.67 ± 2.88) (Figure 8a). The mean intensity was 2 parasites per infected fish in system A and approximately 4 in system B (Figure 8c). This trend was also reflected in the mean abundance, which was considerably lower in system A (Figure 8d).
At the third and final sampling point (27 May), prevalence returned to 100% in both systems (Figure 8b), indicating possible reinfection or parasite life cycle re-establishment. The mean number of parasites per gill, as well as the intensity and abundance values, were slightly higher in system A, although differences were not statistically significant (Figure 8a,c,d).
The number of monogenean eggs collected on cotton trap strips varied throughout the experimental period and partially followed the progressive increase in water temperature recorded at each sampling point (Figure 9).
On 24 March and 13 April, water temperatures reached 16 °C and 20 °C, respectively. During these periods, the number of eggs deposited was very low in both systems (<10 eggs/12 cm2), with no statistically significant differences observed between systems A and B.
By 24 April, still at 20 °C, there was a marked and statistically significant increase in egg deposition in both systems. However, values were significantly higher in system B than in system A, indicating an initial divergence in parasite reproductive output.
At the following sampling point, 5 May, with the water temperature remaining stable at 20 °C, the number of eggs decreased significantly in system A, whereas in system B, the reduction was not statistically significant, maintaining relatively high levels of egg deposition.
On 11 May, with the water temperature rising to 21 °C, a new significant increase in egg counts was observed in both systems. However, values in system B (without macroalgae) were considerably higher than those in system A, suggesting a potential mitigating effect of the algal component.
At the final sampling on 24 May, when the water temperature reached 23 °C, egg counts increased again in both systems, maintaining the pattern of higher deposition in system B. Despite this general increase, the differences between the systems were not statistically significant at this stage.

4. Discussion

In this study, a multi-trophic RAS was developed for the production of fish (Sparus aurata), integrated with macroalgae (Ulva ohnoi) cultivation for water bioremediation. The choice of a macroalgae of the genus Ulva was because of its known ease of adaptation to IMTA systems for biomass production and bioremediation, being especially abundant in land-based aquaculture production systems in the Algarve region [49,50].

4.1. Macroalgae Production

The evaluation of U. ohnoi biomass production was monitored over 180 days, covering the autumn and winter seasons. Atmospheric and quality conditions are the parameters that most limit the production of marine macroalgae. Their growth generally increases with radiation, temperature, nutrient concentration, and pCO2 level [51,52,53], and these factors may also have a significant impact on the biochemical composition of macroalgae, this influence being notable in species of the genus Ulva [54].
During the study period, the water temperature in the RAS fluctuated normally for the time of year, starting with a maximum peak of 20.7 °C, then decreasing to 14.3 °C in the last days of December, and then rising to 20.3 °C in mid-March, the final period of the trial. The optimum temperature for Ulva ohnoi is between 20 and 25 °C, with temperatures below 10 °C and above 30 °C being detrimental to growth [55]. Solar radiation also underwent natural fluctuation. At the beginning of October, radiation was around 18 MJ·m−2, falling to around 9 MJ·m−2 in December. At the end of the test, in mid-March, the average radiation was around 13 MJ·m−2. There were daily fluctuations caused by unstable weather conditions typical of the period in question. In the southern region of Portugal, the average global solar radiation is between 16 and 22 MJ·m−2 in the spring and between 8 and 12 MJ·m−2 in the autumn months [56]. The values recorded in this work are within expected values for the region of work. Estimated daily light integrals (DLI) in Faro ranged from approximately 2 to 53 mol photons m−2 d−1 (see Supplementary Table S1), largely exceeding the reported light saturation points (Ik) for Ulva [55]. This indicates that light availability was unlikely to limit algal growth during the study period.
The production of U. ohnoi exhibited moderate variation across sampling periods, with biomass yield remaining stable despite seasonal fluctuations in environmental conditions. Its daily growth varied between 7.4 and 24.4%, with the highest value recorded at the beginning of autumn and the lowest in January. In the work of Lawton et al. (2012) [57], a daily growth rate that varied between 10 and 35% was recorded to U.ohnoi, in cultivation with wastewater at temperatures between 17.5 and 28.8 °C. Other studies report growth rates between 7 and 14% d−1 for Ulva lactuca in laboratory environment [58], 15.6 and 17.8% d−1 for the same species cultivated in the ocean [59], 12 to 16% d−1 for Ulva rigida in outdoor tanks [60], and 25% d−1 for Ulva rotundata cultivated directly in the ocean [61]. The results obtained in this work are therefore within the expected values for macroalgae of the genus Ulva.
Principal Component Analysis (PCA) revealed a strong seasonal gradient driven primarily by photoperiod and temperature, whereas accumulated radiation contributed independently. Generalized Additive Model (GAM) analysis, however, detected no significant non-linear relationships between biomass yield and the tested environmental variables, indicating the resilience of U. ohnoi production to environmental variation within the observed range. The nitrogen and phosphorus excretion values calculated through analysis of nutrient flows models also did not reveal any correlation with biomass production, leading us to suspect that the variation in nutrient concentration was not sufficient to have an impact on U. ohnoi production.
These findings align with previous studies demonstrating U. ohnoi’s broad ecological plasticity and tolerance to fluctuations in temperature and irradiance [57]. Although, in this work, it was not possible to carry out a continuous and rigorous characterization of the concentration of nutrients, the consistently high availability in recirculating aquaculture system (RAS) water likely further mitigated the effects of radiation and photoperiod variability. This high availability in recirculating aquaculture system (RAS) water as well as the high water flow rates in the macroalgae tanks allowed a greater flow of nutrients [62] even as to create some movement, like the aerators, on the tank for the particulates were in suspension and possibly for this reason, there was a greater and better algae biomass [63]. Another reason why a linear relationship was not observed between the environmental parameters analyzed and the production of macroalgae may also be due to the impact that these had on the growth of other algae on the walls of the cultivation tanks. That is, with the improvement of the cultivation conditions, namely with the increase in temperature, photoperiod, and solar radiation, there was a parallel growth of other marine organisms on the walls of the tanks whose presence significantly reduced the access of the cultivated macroalgae to solar radiation, thus acting as a brake on the growth of U. ohnoi. This fact suggests that the cultivation of macroalgae should be carried out in tanks where the water surface area is prioritized over the height of the water column. In this way, the photosynthetic capacity of the macroalgae can be optimized, without needing to increase the work effort in cleaning the walls of the tanks.

4.2. Sea Urchin Production

Feeding sea urchins with macroalgae of the genus Ulva is a common practice, with a large collection of studies describing its potential as food for these echinoderms. Its application has been tested in its fresh form [20,64] or as an ingredient in inert food formulations [20,65]. This macroalgae is characterized by a nutritional profile rich in protein, minerals, fibers, and active compounds, being relatively low in fats [19]. In a previous study with the same alga [20], protein values were determined in the order of 22.13% (dry matter) and fats in 1.63%, with the fatty acid profile characterized by a PUFA content of 26.8%, with a good contribution from 20:5 ω3 (EPA), which reached 1.6% of the total fatty acid content. Through the same study it was found that the high presence of this fatty acid in Ulva contributed to the enrichment of this same fatty acid in the gonads of the sea urchin. It is therefore possible to state that feeding sea urchins with this type of algae favors the nutritional qualities of the gonads, for human consumption [20,65].
In this study, sea urchins were fed with Ulva ohnoi produced in RAS supplied directly, fresh and drained. The sea urchins adapted perfectly to this alga, and were generally ingested within a few days, with the excretion of feces typical of feeding on this alga being observed. The daily consumption rate (DIR) was relatively stable for all replicates, ranging from 1.77 to 2.04% of their body weight per day. These values were relatively low when compared to similar studies [63,65,66]. In this study, food was supplied to sea urchins periodically, with the amount supplied at that time varying according to previous consumption, and for this purpose, the amount of macroalgae remaining in the tanks was observed. This strategy may not have optimized consumption for higher DIR values. Sea-urchin growth is a parameter that varies greatly depending on the life stage of sea urchins, with a significant slowdown being observed after 4 years of age [67]. The growth rate is also obviously dependent on other environmental factors such as food availability and quality, and water temperature. The maturation of the gonads also influences the growth rate [68,69]. In this work, growth rates between 0.27 and 0.33% day−1 were observed, values higher than those obtained by Araújo et al. (2023) [20] and Loureiro (2021) [68] but lower than those obtained by Candeias-Mendes et al. (2020) [64]. Spiegel et al. (2018) [70] analyzed the growth of P. lividus in an IMTA system where it was fed with Ulva lactuca, obtaining a maximum SGR of 0.34 day−1, which reduced to a minimum of 0.07 day−1. We can therefore verify that the growth of sea urchins in the present work presented values considered normal considering the diet applied. These values can be maximized using inert foods such as those tested by Loureiro (2021) [68], which despite containing a 20% Ulva sp. content, were enriched with other macroalgae, plant proteins and carbohydrates, as well as microalgae biomass rich in DHA. These inert foods have clear nutritional advantages, but are much more expensive, especially considering that the macroalgae biomass used in this work was produced in bioremediation tanks of a RAS system.

4.3. Sea Bream Production and Welfare

In this study, the condition of the fish (Sparus aurata) was monitored during testing of the experimental RAS system, comparing the growth and health of fish reared with and without macroalgae integration (U. ohnoi). Regarding growth and nutritional parameters, no significant differences were observed between the two systems and fish performance was below the expected standards for the species under optimal RAS conditions. The FCR (feed conversion ratio) values ranged from 2.13 to 2.58 and 2.50 to 2.53 for the system with and without algae, respectively. These values are considered high compared to those reported in the literature, where FCR values for S. aurata fed under controlled conditions in RAS systems typically range between 1.42 and 1.70 in Parma et al. (2020) [71] and around 1.89 in Zohar et al. (2005) [72]. Likewise, the specific growth rate (SGR) varied from 0.33 ± 0.14 to 0.28 ± 0.24%·day−1 in the presence of algae, and from 0.31 ± 0.15 to 0.29 ± 0.48%·day−1 in the absence of algae. These values are considerably low for this type of optimized system, as reported by Parma et al. (2020) [71], who recorded SGR values between 0.97 and 1.22%·day−1, and by Petridis & Rogdakis (2008) [73], who observed SGR values typically between 1.0 and 2.2%·day−1, with values below 1.0%·day−1 occurring only during colder months. Although this experimental RAS system had a low water flow rate in the fish tanks compared to other studies, like Parma et al. (2020) [71], the density of gilthead seabream in the tanks did not justify a larger water flow rate and the ammonium concentrations never reached a critical level, remaining a low to moderate concentration. However, these conclusions are based on calculated theoretical values and regular measurements using a colorimetric test kit (Salifert, Duiven, The Netherlands). Additionally, despite the low SGR, the fish were never in undernutrition presenting an average weight for the system with and without algae, respectively, of 265.7 ± 40.8 g and 267.1 ± 40.5 g in the 43 days as well as 276.8 ± 45.1 g and 282.1 ± 51.8 g in the 65 days. For these reasons, no major problems were recorded in water quality, fish health, or tank load. So the FCR and SGR values may be associated with failures in the physical process of feeding (manual). In general, it can consequently be stated that the gilthead seabream farming system under these conditions was not optimized to maximize production and, therefore, this study highlights the importance of putting automatic feeders in future RAS systems for a better and controlled management of feeding.
The parasitological monitoring revealed distinct patterns between the two systems over time, with system A (macroalgae) showing reduced parasite loads during the second sampling point. This coincided with the lowest prevalence (50%) and abundance values, suggesting a potential short-term mitigating effect of U. ohnoi on parasite transmission or host susceptibility. However, at the final sampling date, infection levels increased again in both systems, returning to 100% prevalence, indicating that the effect may be temporary or influenced by environmental or biological factors (e.g., parasite life cycle, temperature, or fish immune status).
Although parasite intensity and abundance were slightly higher in system A at the final sampling, no significant differences were observed, highlighting the need for longer-term studies to determine the consistency and mechanisms of macroalgae-related parasite control in multi-trophic RAS systems. Hutson et al. (2012) [28] also observed no significant differences in the number of Neobenedenia sp. parasites attached to the gills of Lates calcarifer after 24 h of exposure to several macroalgal extracts, including Ulva sp.
The number of monogenean eggs deposited on cotton substrate varied substantially throughout the trial period and appeared to be partially influenced by water temperature and system type.
During the initial sampling dates (24 March and 13 April), parasite egg counts remained low in both systems, coinciding with relatively lower water temperatures (16–20 °C). This suggests that early in the reproductive season, environmental conditions were not yet optimal for monogenean oviposition.
On 24 April, egg deposition increased significantly in both systems, despite stable temperatures, indicating that parasite reproduction had intensified. Notably, egg counts were significantly higher in system B, suggesting that the presence of Ulva ohnoi in system A may have exerted a limiting effect on parasite reproduction or egg retention.
By 5 May, a significant reduction in egg numbers was observed in system A, while egg counts in system B remained elevated, albeit without statistical significance. This divergence supports the hypothesis that macroalgae may contribute to interrupting the parasite’s reproductive cycle, possibly by altering water chemistry or microbial composition.
On 11 May, with a temperature increase to 21 °C, egg production rose again in both systems. However, system B consistently exhibited higher egg densities, reinforcing the pattern observed earlier. At the final sampling point (24 May, 23 °C), both systems displayed increased egg counts, although differences were no longer statistically significant. Similar findings from Hutson et al. (2012) [28] demonstrated that extracts of Ulva sp. and Asparagopsis taxiformis had significant inhibitory effects on the embryonic development and hatching success of the monogenean Neobenedenia sp. infecting Lates calcarifer, resulting in prolonged embryonation and a reduction in overall hatching success, more pronounced in A. taxiformis.
Overall, the results suggest that while temperature clearly influences monogenean reproduction, the integration of macroalgae in RAS systems may help mitigate parasite egg accumulation, particularly during intermediate stages of the reproductive cycle. Further investigation is warranted to determine whether this effect is due to physical interference, chemical interactions, or shifts in microbial communities associated with the algae.

5. Conclusions

This study demonstrates the technical feasibility and ecological potential of integrating Ulva ohnoi cultivation and Paracentrotus lividus rearing into a multi-trophic recirculating aquaculture system (RAS) with Sparus aurata. The macroalgae showed consistent biomass production across seasons, while effectively supporting sea urchin growth and providing indications of parasite mitigation in the fish component of the system. Although no strong environmental drivers of Ulva biomass were detected, its resilience and adaptability confirm its suitability for land-based integrated systems. However, limited environmental variation observed during autumn and winter may have reduced the ability to detect clear dependencies between environmental parameters and macroalgal growth. We suggest that future experiments should include periods of greater seasonal variability—such as spring and summer—or be complemented by controlled indoor trials. These approaches would allow better isolation of the effects of temperature, light intensity, and photoperiod on Ulva ohnoi growth, and further validate the species’ ecological plasticity under a broader range of conditions.
Based on the algal growth rates observed in this study and the feeding behavior of sea urchins, it is estimated that the integrated macroalgal production could support the feeding of approximately 1017 to 5356 P. lividus individuals, depending on the season and corresponding algal productivity. Considering the average algal biomass produced, the system can sustainably feed around 3000 sea urchins under the given dimensions and a daily intake rate (DIR) of 5%. In terms of final biomass at the time of sale, using this exact system, this can correspond to between 150 and 360 kg of whole sea urchins, depending on their diameter and condition. This estimation highlights the potential of this RAS-IMTA configuration not only for water bioremediation but also as a reliable biomass source for valuable echinoderm species, contributing to circularity and economic diversification in aquaculture.
Further optimization and longer-term assessments will be essential to fully understand the dynamics of species interactions and to improve the productivity and resilience of such systems under commercial conditions.

Supplementary Materials

The following supporting information can be downloaded at https://www.mdpi.com/article/10.3390/fishes10090447/s1, Supplementary Table S1. Monthly mean values (±standard deviation) of global radiation (MJ m−2 d−1) and estimated daily light integral (DLI, mol photons m−2 d−1) in Faro, Portugal, from meteorological station records.

Author Contributions

Conceptualization, J.A., F.S. and P.P.-F.; methodology, J.A. and F.S.; writing—original draft, J.A., A.C.M. and M.C.R.; investigation, J.A. and F.S.; data curation, J.A., A.C.M. and A.C.C.; parasitology analysis, A.C.M. and M.C.R.; practical work, J.A. and A.C.C.; formal analysis, J.A., A.C.M., M.C.R. and A.C.C.; writing—review and editing, J.A. and F.S.; supervision, F.S. and P.P.-F. funding acquisition, P.P.-F.; resources, P.P.-F. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by Project AQUAFISH 0.0—Improving acceptance and social awareness in the consumption of sustainable marine food products developed under the zero-waste philosophy (co-financed by the Interreg Atlantic Area Programme through the European Regional Development Fund), project INOVAQUA—Inovacão, diversificacão e desenvolvimento da aquacultura em Portugal (MAR-021.1.3-FEAMPA-00004), project SAÚDE&AQUA II—Prevencão e bem-estar em aquacultura marinha: Apoio à identificação e controlo de patógenos em aquacultura (MAR-021.1.3-FEAMPA-00018), and project “BLUE BIOECONOMY INNOVATION PACT—Vertical Algas” (Project No. C644915664-00000026) co-financed by NextGenerationEU, through the “Business Innovation Agendas” investment of the Recovery and Resilience Plan (RRP).

Institutional Review Board Statement

This study was conducted according to the guidelines of the recommendations of the Federation of European Laboratory Animal Science Associations (FELASA) and the Portuguese legislation for Laboratory Animal Science (EU Directive 2010/63; Decreto-Lei n◦ 113/2013) and approved by IPMAs Animal Welfare and Ethics Body (ORBEA), (protocol code 009366 and date of approval 26 June 2023), overseen by the National Authority for the use of live animals, also known as the Directorate-General for Food and Veterinary (DGAV).

Data Availability Statement

Data will be made available on request.

Conflicts of Interest

The authors declare no conflicts of interest.

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Figure 1. Circuit diagram of the experimental integrated recirculation system (RAS). Each RAS unit consists of two fish tanks, a bio-mechanical filtration unit, a skimmer (for removing organic compounds), eight tanks for bioremediation of water through the action of marine algae, and other components for aeration, oxygenation, and water circulation.
Figure 1. Circuit diagram of the experimental integrated recirculation system (RAS). Each RAS unit consists of two fish tanks, a bio-mechanical filtration unit, a skimmer (for removing organic compounds), eight tanks for bioremediation of water through the action of marine algae, and other components for aeration, oxygenation, and water circulation.
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Figure 2. Mean daily macroalgae (Ulva ohnoi) biomass gain (% day−1) during the first phase of the experiment.
Figure 2. Mean daily macroalgae (Ulva ohnoi) biomass gain (% day−1) during the first phase of the experiment.
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Figure 3. Scatter plots showing the relationship between daily Ulva ohnoi biomass gained and each environmental variable (accumulated global radiation, photoperiod, and water temperature).
Figure 3. Scatter plots showing the relationship between daily Ulva ohnoi biomass gained and each environmental variable (accumulated global radiation, photoperiod, and water temperature).
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Figure 4. Principal Component Analysis (PCA) for the three environmental variables (accumulated global radiation, photoperiod, and water temperature) and macroalgae biomass production (Ulva ohnoi).
Figure 4. Principal Component Analysis (PCA) for the three environmental variables (accumulated global radiation, photoperiod, and water temperature) and macroalgae biomass production (Ulva ohnoi).
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Figure 5. Relationship between Ulva ohnoi daily biomass growth (%) and selected environmental parameters (temperature, radiation, and photoperiod) assessed using Generalized Additive Models (GAMs). The markers represent observed values at each sampling date, while the black curve shows the non-linear relationship estimated by the GAM. The shaded area represents the 95% confidence interval around the fitted curve.
Figure 5. Relationship between Ulva ohnoi daily biomass growth (%) and selected environmental parameters (temperature, radiation, and photoperiod) assessed using Generalized Additive Models (GAMs). The markers represent observed values at each sampling date, while the black curve shows the non-linear relationship estimated by the GAM. The shaded area represents the 95% confidence interval around the fitted curve.
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Figure 6. Correlation between nitrogen (left) and phosphorus (right) excretion and the average macroalgal (Ulva ohnoi) biomass gain in the different periods of the experiment.
Figure 6. Correlation between nitrogen (left) and phosphorus (right) excretion and the average macroalgal (Ulva ohnoi) biomass gain in the different periods of the experiment.
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Figure 7. Variation in water temperature (°C), the total weight (g) and test diameter (mm) of sea urchins (Paracentrotus lividus) during the first phase of the test.
Figure 7. Variation in water temperature (°C), the total weight (g) and test diameter (mm) of sea urchins (Paracentrotus lividus) during the first phase of the test.
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Figure 8. Parasitological parameters of monogenean infection in gilthead seabream (Sparus aurata) reared in two different RAS systems (A: with macroalgae Ulva ohnoi; B: control) at three sampling points (10 April, 6 May, and 27 May). (a) Mean number of parasites per gill arch (±SD); (b) Prevalence of infection (% of infected fish); (c) Mean intensity (parasites per infected fish); (d) Mean abundance (parasites per total number of fish sampled). Different letters above bars indicate statistically significant differences between groups (p < 0.05).
Figure 8. Parasitological parameters of monogenean infection in gilthead seabream (Sparus aurata) reared in two different RAS systems (A: with macroalgae Ulva ohnoi; B: control) at three sampling points (10 April, 6 May, and 27 May). (a) Mean number of parasites per gill arch (±SD); (b) Prevalence of infection (% of infected fish); (c) Mean intensity (parasites per infected fish); (d) Mean abundance (parasites per total number of fish sampled). Different letters above bars indicate statistically significant differences between groups (p < 0.05).
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Figure 9. Number of monogenean parasite eggs (per 12 cm2) collected from cotton trap strips in two RAS systems (A: with macroalgae Ulva ohnoi; B: control, without macroalgae) across six sampling dates, alongside recorded water temperature (°C). Bars represent mean egg counts ± standard deviation. The grey line indicates water temperature measured at each sampling point. Different lowercase letters indicate statistically significant differences between systems at each time point (p < 0.05). Asterisks (*) denote significant differences in egg counts between systems, a and b represent significant differences between sampling points.
Figure 9. Number of monogenean parasite eggs (per 12 cm2) collected from cotton trap strips in two RAS systems (A: with macroalgae Ulva ohnoi; B: control, without macroalgae) across six sampling dates, alongside recorded water temperature (°C). Bars represent mean egg counts ± standard deviation. The grey line indicates water temperature measured at each sampling point. Different lowercase letters indicate statistically significant differences between systems at each time point (p < 0.05). Asterisks (*) denote significant differences in egg counts between systems, a and b represent significant differences between sampling points.
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Table 1. All pairwise multiple comparison procedures (Dunn’s Method) analysis of the daily biomass gain (% day−1) of Ulva ohnoi for the sampling pairs. Shows only the results on pairs with significant differences (p < 0.005).
Table 1. All pairwise multiple comparison procedures (Dunn’s Method) analysis of the daily biomass gain (% day−1) of Ulva ohnoi for the sampling pairs. Shows only the results on pairs with significant differences (p < 0.005).
Pair of SamplesQ Valuep Value
4 October/30 December3.8540.014
4 October/9 January4.589<0.001
4 October/23 January4.480<0.001
4 October/5 February4.2400.003
4 October/14 March3.9000.012
12 November/9 January4.1490.004
12 November/23 January4.0160.007
12 November/5 February3.7210.024
20 December/9 January4.0280.007
20 December/23 January3.8950.012
20 December/5 February3.6000.038
Table 2. Daily intake rate (%), feed conversion ratio (FCR), specific growth rate (SGR) (% day−1) and gonadossomatic index (GI) (%) data of sea urchins Paracentrotus lividus production fed by Ulva ohnoi.
Table 2. Daily intake rate (%), feed conversion ratio (FCR), specific growth rate (SGR) (% day−1) and gonadossomatic index (GI) (%) data of sea urchins Paracentrotus lividus production fed by Ulva ohnoi.
Sea UrchinsAt 0 Days
T (°C) = 20.8 ± 0.99
At 76 Days
T (°C) = 17.7 ± 1.59
At 150 Days
T (°C) = 15.3 ± 1.16
At 175 Days
T (°C) = 16.4 ± 0.61
Biomass (kg)3.11 ± 0.354.01 ± 0.814.82 ± 1.054.99 ± 1.23
DIR (%)-2.04 ± 0.061.83 ± 0.021.77 ± 0.02
FCR-5.97 ± 0.276.36 ± 0.106.60 ± 0.06
SGR (% day−1)-0.33 ± 0.230.29 ± 0.290.27 ± 0.34
GSI (%)7.34 ± 1.72--2.88 ± 1.23
Table 3. Biomass (kg), density (Kg m3 −1), daily intake rate (DIR) (%), feed conversion ratio (FCR), specific growth rate (SGR) (% day−1) and condition factor (CF) (g cm−3) of gilt-head seabream (Sparus aurata) produced in the presence and absence of macroalgae (Ulva ohnoi).
Table 3. Biomass (kg), density (Kg m3 −1), daily intake rate (DIR) (%), feed conversion ratio (FCR), specific growth rate (SGR) (% day−1) and condition factor (CF) (g cm−3) of gilt-head seabream (Sparus aurata) produced in the presence and absence of macroalgae (Ulva ohnoi).
At 0 Days
T (°C) = 17.2 ± 0.17
At 43 Days
T (°C) = 20.0 ± 1.41
At 65 Days
T (°C) = 21.8 ± 1.98
Gilthead Seabream (S. aurata) ProductionIn the presence of algaeNumber of Fish220213207
Biomass (kg)50.66 ± 8.4656.58 ± 8.6957.30 ± 9.33
Density (kg m3 −1)16.89 ± 2.8218.86 ± 2.9019.10 ± 3.11
DIR (%)-0.70 ± 0.020.71 ± 0.01
FCR -2.13 ± 0.132.58 ± 0.05
SGR (% day−1)-0.33 ± 0.140.28 ± 0.24
CF (g cm−3)1.66 ± 0.131.72 ± 0.251.65 ± 0.10
In the absence of algaeNumber of Fish220214208
Biomass (kg)51.47 ± 8.3657.16 ± 8.6758.68 ± 10.78
Density (kg m3 −1)17.16 ± 2.7919.05 ± 2.8919.56 ± 3.59
DIR (%)-0.71 ± 0.020.71 ± 0.01
FCR-2.50 ± 0.122.53 ± 0.03
SGR (% day−1)-0.31 ± 0.150.29 ± 0.48
CF (g cm−3)1.64 ± 0.141.78 ± 0.211.64 ± 0.10
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Araújo, J.; Carvalho, A.C.; Matias, A.C.; Ribeiro, M.C.; Soares, F.; Pousão-Ferreira, P. Integration of Ulva ohnoi in a Recirculating Aquaculture System for Gilthead Seabream (Sparus aurata) and Its Use as Feed for Sea Urchin (Paracentrotus lividus) Production: A Contribution to Circular and Sustainable Aquaculture Practices. Fishes 2025, 10, 447. https://doi.org/10.3390/fishes10090447

AMA Style

Araújo J, Carvalho AC, Matias AC, Ribeiro MC, Soares F, Pousão-Ferreira P. Integration of Ulva ohnoi in a Recirculating Aquaculture System for Gilthead Seabream (Sparus aurata) and Its Use as Feed for Sea Urchin (Paracentrotus lividus) Production: A Contribution to Circular and Sustainable Aquaculture Practices. Fishes. 2025; 10(9):447. https://doi.org/10.3390/fishes10090447

Chicago/Turabian Style

Araújo, João, Ana Catarina Carvalho, Ana Carolina Matias, Maria Carolina Ribeiro, Florbela Soares, and Pedro Pousão-Ferreira. 2025. "Integration of Ulva ohnoi in a Recirculating Aquaculture System for Gilthead Seabream (Sparus aurata) and Its Use as Feed for Sea Urchin (Paracentrotus lividus) Production: A Contribution to Circular and Sustainable Aquaculture Practices" Fishes 10, no. 9: 447. https://doi.org/10.3390/fishes10090447

APA Style

Araújo, J., Carvalho, A. C., Matias, A. C., Ribeiro, M. C., Soares, F., & Pousão-Ferreira, P. (2025). Integration of Ulva ohnoi in a Recirculating Aquaculture System for Gilthead Seabream (Sparus aurata) and Its Use as Feed for Sea Urchin (Paracentrotus lividus) Production: A Contribution to Circular and Sustainable Aquaculture Practices. Fishes, 10(9), 447. https://doi.org/10.3390/fishes10090447

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