Designing the Next Generation of Condition Tracking and Early Warning Systems for Shellfish Aquaculture
Abstract
:1. Introduction
2. Constructing a Model-Based Biological-EWS
2.1. Basic Definition of the Early Warning System for Bivalve Aquaculture
- first is to determine adequate temporal (defined by the individual dynamics) and spatial (defined by the environmental factors) scales of variations;
- second is to assess the inter-individual variability and consider how this source of variability can be filtered out to detect potential sources of disturbances;
- third is to provide precise and operational definitions of the practical components of the EWS. Setup, measurement protocols, maintenance, task flow, computer time, and outputs should be carefully established, in such a way that the system can be tested and be adapted to a large range of conditions.
2.2. Valvometry to Infer Shell Valve Movements
- The technology of the sensor is based on the electromagnetic properties of the system composed of a magnet and the Hall-effect semi-conductor. It cannot be used if any other significant magnetic sources interfere with the system.
- The use of the HES system requires intensive calculations to treat the data series for two main reasons. First, the dynamic geometric property changes during valve movements complicates all of the calculations; second, the resulting inverse function that evaluates the valve gape distance from a series of Hall voltage measurements (see [1] for full details) implies finding the positive real roots of a polynomial function.
- The calibration step, which converts the Hall voltages into valve gape distances is difficult to assess before the data series of the Hall current variations are collected. The admitted procedure is to perform measurements, then to sever the adductor muscle(s) of the bivalve and calibrate the Hall voltage as a function of known distances. This is accomplished by inserting a series of wedges between the two valves [1]. However, in monitoring systems it is necessary to calibrate the HES on living organisms, prior to beginning survey measurements start. It can be performed by chemically relaxing the adductor muscle(s) [39] before inserting the calibrated wedges between the valves.
- As for any other electronic sensors, the sources of electrical noise [40] may affect the resulting measurements [41] and the electromagnetic properties are modified by environmental variability (e.g., temperature [42]). In addition, the precision of any valve gape distance estimates made in terms of sensitivity will decrease with the distance between the magnet and the semi-conductor [1].
2.3. Modeling the Dynamics of Bivalve Shell Valve Movements
2.4. Dynamic Criteria Describing the Physiological Condition of Bivalves
2.5. Diagnosing Disturbances from Valvometry Measurements
- A sustained increase in the steady-state opening angle,
- A sudden and repeated increase in the closing peak frequency, and
- A significant increase in the intensity of closing peaks, up to extreme events of complete and sustained closure of the shell.
3. Working with Data
3.1. Optimization in the Framework of Hybrid Dynamics
3.2. Using Valvometry Data and Series of Parameter Estimates to Detect Disturbances
- When there was no peak, there was no means to detect a convergence to an equilibrium, hence it was impossible to estimate K, and the last value estimated was used for the simulation. This occurred 16, 37, 83, and 47 times over 193 time periods for individuals 1 to 4, respectively.
- When the equilibrium value (continuous baseline) drifted continuously (i.e., increased or, rarely, decreased monotonously), then the estimated values of tended to drift in such a way that the equilibrium estimate (Appendix A Equation (A6)) got closer to the extreme value, , or zero, respectively. Then, the equilibrium value was forced to be the average of the series and the parameter optimization was ignored. This occurred 22, 29, 17, and 24 times over 193 periods for individuals 1 to 4, respectively.
4. Discussion
4.1. A System Based on Quantification of the Valve Gape Dynamics
- For a continuous regime, the equilibrium opening value is a balance between the passive opening force produced by the ligament and the active force contraction capacity of the adductor muscle. The wider the valve gape angle, the lower the contraction strength. Therefore, this is a relevant indicator of the physiological condition of the organism. As with all ectotherms, the metabolism is sensitive to temperature changes, but bivalves have developed physiological abilities to cope with unfavorable changes: primarily, the diversity of fibers allows different behaviors with minimizing the amount of energy [51]. An example of this is the catch behavior of the smooth muscle, allowing valve closing to avoid desiccation for bivalves in intertidal conditions, even if large temperature changes occur at the same time.
- For a discrete regime, which is mainly characterized by fast closings to expulse water and wastes and any irritating exogeneous particles or organisms. Bivalves also close their shell quickly when perceiving a threat. A behavior of repeated or sustained closing events is an indicator of stress. The deviation of the closing event probability from random process distributions is a good indicator and can lead to the definition of thresholds, but the identification of external disturbances relies on the detection of synchronized behaviors, hence requires replication. There is no standardization regarding replications and about the number of individuals that should present a synchronized behavior to detect an external disturbance. Surprisingly, there is no statistical estimate of such a number, even if the the analysis of the individual disturbed behavior heavily rest on statistics (e.g., [25]).
- A particular regime applicable only for mobile species (i.e., not attached to a substrate and able to swim over short distances) is characterized by a reflex-type series of contractions that create strong valve movements. For scallops, used as a model organism in this study, such activity is used to bury (to orient the opening toward the main flow direction), to jump, or to swim [1]. It causes sequences of slow increases of the valve gape angle followed by a sharp closing and then a slow reopening [1,30]. This requires a substantial amount of energy, hence these episodes are limited in time and tend not to occur if the organism is physiologically deficient. Such behaviors occur in case of punctual stress (e.g., threat by predators) but not exclusively and they may be difficult to exploit because of their scarcity.
4.2. Scoring the Dynamic Regimes
4.3. Practical Consideration about Data Acquisition and Alerts
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. Biophysical Model
Appendix B. Bivalve-Based Systems Mentioned in Scientific Literature
Name | Developer or Owner | Technical Source |
---|---|---|
Dreissena-Monitor * | U. Cologne (Germany) | Borcherding 1992 [55] |
Micrel | Ifremer (France) | Floch 1998 [56] |
MosselMoniter * | Delta Consult B.V. (Netherlands) | Kramer and Foekema 2001 [5] |
MolluSCAN eye * | U. Bordeaux (France) | Sow et al., 2011 [23] |
MusselTracker | San Jose State U. (USA) | Miller and Dowd 2017 [57] |
Sense-T | U. Tasmania and CSIRO (Australia) | Andrewartha et al., 2015 [6] |
Appendix C. Analytical Methods in Valvometry-Based Water Quality Monitoring Systems
Bivalve | Model or Statistical Framework (Measurements Used) | Status | Source |
---|---|---|---|
associated with MolluSCAN | |||
review article | non-parametric model with kernel density estimates (valve gaping with experimental correlation to desired parameter) | operational | Andrade et al., 2016 [21] |
Crassostrea gigas | estimated survival function with a semi-Markov model (least visited opening width) | data analysis | Azaïs et al., 2014 [27] |
Oysters | estimates kernel density of valve gape state to estimate probability an individual will survive or not, post-observation period (opening amplitudes) | data analysis | Coudret et al., 2015 [24] |
C. gigas | discrete signal processing of tail conditional probabilities (valve gaping and closing speed) | data analysis | Durrieu et al., 2015 [25] |
C. gigas | same as Durrieu et al., 2015 (valve gaping, closing speed, and enzyme biomarkers) | data analysis | Durrieu et al., 2016 [47] |
Corbicula fluminea | statistical comparison of behavioral and biochemical estimates (valve gaping, agitation, tissue contamination, and proteomics) | empirical | Miserazzi et al., 2020 [16] |
C. gigas | non-parametric kernel regression, then correlation with parameter of interest (valve gape distances, movement speeds, and valve opening patterns per 24 h interval) | data analysis | Sow et al., 2011 [23] |
C. fluminea | non-parametric kernel regression, then correlation with parameter of interest (valve gaping, siphon extension, and contaminant assays) | empirical | Tran et al., 2003 [22] |
C. fluminea | logistic regression of valve response time as a function of contaminant dose (valve closure and contaminant detection threshold) | empirical | Tran et al., 2004 [58] |
C. fluminea | similar to Tran et al., 2004 added maximum likelihood estimators (valve closure and contaminant detection threshold) | empirical | Tran et al., 2007 [59] |
associated with MosselMonitor | |||
Dreissena polymorpha; Mytilus edulis | comparison of descriptive statistics (average amount of time valves closed hourly and percentage of maximum opening distance) | operational | Kramer et al., 1989 [5] |
Anodonta woodiana | comparison of descriptive statistics (average amount of time valves closed hourly and percentage of maximum opening distance) | operational | Giari et al., 2017 [33] |
Other developments | |||
C. gigas | suggests statistical correlation with environmental conditions (valve gape, heart rate, and body T) | empirical | Andrewartha et al., 2015 [6] |
C. gigas, M. edulis | statistical correlation with arbitrary threshold set to 20% (synchronous movements and amplitude variance) | empirical | Bouget and Mazurié 1999 [60] |
review article | suggests possible experimental correlation with ocean pCO (valve gaping behavior) | empirical | Clements and Comeau 2019 [12] |
M. galloprovincialis | statistically-tested comparisons of periodicity of gaping and environmental parameters (relative valve openness) | empirical | Comeau et al., 2018 [61] |
M. galloprovincialis | mixed-model ANOVA of valve gaping and algal toxin concentrations (valve gaping parameters) | empirical | Comeau et al., 2019 [18] |
M. galloprovincialis | unnamed time-series analysis (averaged resistances from sensors classified as “not defective” by analog system) | empirical | Gnyubkin 2009 [49] |
C. fluminea | 3-parameter Hill equation fit of valve closing time series to construct dose-response profiles (fitted daily valve closing activity curves) | empirical, data analysis | Jou and Liao 2006 [26] |
C. fluminea | see Jou and Liao 2006, with siphon movements added (fitted daily valve and siphon activity curves, as well as circadian rhythms) | empirical | Jou et al., 2016 [17] |
C. fluminea | see Jou et al., 2006 (behavioral toxicity assays and valve daily activity) | empirical | Liao et al., 2009 [62] |
M. californianus | statistical inference on estimates (valve gaping, body T, and posture) | empirical | Miller and Dowd 2017 [57] |
M. edulis | statistical inference on estimates, linear regression (valve gaping and distance traveled in contaminant exposure tests) | empirical | Redmond et al., 2017 [8] |
M. edulis | time series analysis of response curve and statistical inference (valve gape distance and closing) | empirical | Riisgård et al., 2006 [63] |
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Guarini, J.-M.; Hinz, S.; Coston-Guarini, J. Designing the Next Generation of Condition Tracking and Early Warning Systems for Shellfish Aquaculture. J. Mar. Sci. Eng. 2021, 9, 1084. https://doi.org/10.3390/jmse9101084
Guarini J-M, Hinz S, Coston-Guarini J. Designing the Next Generation of Condition Tracking and Early Warning Systems for Shellfish Aquaculture. Journal of Marine Science and Engineering. 2021; 9(10):1084. https://doi.org/10.3390/jmse9101084
Chicago/Turabian StyleGuarini, Jean-Marc, Shawn Hinz, and Jennifer Coston-Guarini. 2021. "Designing the Next Generation of Condition Tracking and Early Warning Systems for Shellfish Aquaculture" Journal of Marine Science and Engineering 9, no. 10: 1084. https://doi.org/10.3390/jmse9101084
APA StyleGuarini, J.-M., Hinz, S., & Coston-Guarini, J. (2021). Designing the Next Generation of Condition Tracking and Early Warning Systems for Shellfish Aquaculture. Journal of Marine Science and Engineering, 9(10), 1084. https://doi.org/10.3390/jmse9101084