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Appl. Biosci., Volume 4, Issue 1 (March 2025) – 16 articles

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26 pages, 3130 KiB  
Review
Advancements in Nanotechnology for Targeted and Controlled Drug Delivery in Hematologic Malignancies: Shaping the Future of Targeted Therapeutics
by Abdurraouf Mokhtar Mahmoud and Clara Deambrogi
Appl. Biosci. 2025, 4(1), 16; https://doi.org/10.3390/applbiosci4010016 - 5 Mar 2025
Viewed by 777
Abstract
Hematologic malignancies, including leukemia, lymphoma, and multiple myeloma, pose significant therapeutic challenges due to their heterogeneity and high relapse rates. Nanotechnology has emerged as a promising avenue for precision drug delivery in these malignancies, allowing for enhanced drug concentration at tumor sites and [...] Read more.
Hematologic malignancies, including leukemia, lymphoma, and multiple myeloma, pose significant therapeutic challenges due to their heterogeneity and high relapse rates. Nanotechnology has emerged as a promising avenue for precision drug delivery in these malignancies, allowing for enhanced drug concentration at tumor sites and reducing systemic toxicity. Recent developments in nanocarriers—such as liposomes, polymeric nanoparticles, and inorganic nanoparticles—have enabled targeted approaches, utilizing molecular markers specific to malignant cells to increase therapeutic efficacy while minimizing adverse effects. Evidence from preclinical and clinical studies underscores the potential of nanotechnology to improve patient outcomes by facilitating controlled release, improved bioavailability, and reduced toxicity. However, translating these advancements into clinical practice requires further research to validate their safety and efficacy. This review provides a comprehensive analysis of the latest innovations in nanotechnology for targeted drug delivery in hematologic malignancies, addressing current achievements and future directions for integrating these approaches into Clinical Hemato-Oncology. Full article
(This article belongs to the Special Issue Feature Papers in Applied Biosciences 2024)
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13 pages, 2763 KiB  
Article
Enhanced Protein Digestibility and Amino Acid Profile of a Novel Legume (Inga paterno) Seed Flours: Evaluation of Proximal Composition Changes by Sprouting
by Lizbeth Rosas-Ordoñez, Milena M. Ramírez-Rodrigues, Melissa A. Ramírez-Rodrigues and Taisa S. S. Pereira
Appl. Biosci. 2025, 4(1), 15; https://doi.org/10.3390/applbiosci4010015 - 5 Mar 2025
Viewed by 1022
Abstract
The nutritional value of Inga paterno seeds remains largely unexplored. Given the global protein deficiency, underutilized legumes like I. paterno could serve as alternative protein sources. This study evaluated the effect of sprouting on the composition, protein digestibility (PD) as soluble protein (SP), [...] Read more.
The nutritional value of Inga paterno seeds remains largely unexplored. Given the global protein deficiency, underutilized legumes like I. paterno could serve as alternative protein sources. This study evaluated the effect of sprouting on the composition, protein digestibility (PD) as soluble protein (SP), amino acid profile, free amino acids by UHPLC, and nutritional indicators of I. paterno seed flour. Seeds were sprouted for 0, 2, 4, 6, 8, or 10 days, then dried, milled, and analyzed. The seeds reached 100% sprouting after six days. Sprouting led to a 54.36% decrease in protein content but a 109% increase in the lipid fraction by day six. PD doubled after 8–10 days of sprouting. Additionally, total amino acid content significantly increased and the chemical score of majority essential amino acids tripled. After in vitro digestion, sprouted flour released higher amounts of free amino acids, particularly aspartic acid (from 9.10 ± 0.18 to 19.65 ± 0.97 mg/L), histidine (from 33.48 ± 0.61 to 46.29 ± 2.34 mg/L), alanine (from 16.32 ± 0.40 to 23.74 ± 0.07 mg/L), and lysine (from no detected to 7.12 ± 0.36 m/L). These findings suggest that sprouted I. paterno seeds could be a valuable, digestible protein source with enhanced nutritional quality, making them a promising ingredient for the food industry. Full article
(This article belongs to the Special Issue Plant Natural Compounds: From Discovery to Application)
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23 pages, 6296 KiB  
Article
Dynamic Patch-Based Sample Generation for Pulmonary Nodule Segmentation in Low-Dose CT Scans Using 3D Residual Networks for Lung Cancer Screening
by Ioannis D. Marinakis, Konstantinos Karampidis, Giorgos Papadourakis and Mostefa Kara
Appl. Biosci. 2025, 4(1), 14; https://doi.org/10.3390/applbiosci4010014 - 5 Mar 2025
Viewed by 542
Abstract
Lung cancer is by far the leading cause of cancer death among both men and women, making up almost 25% of all cancer deaths Each year, more people die of lung cancer than colon, breast, and prostate cancer combined. The early detection of [...] Read more.
Lung cancer is by far the leading cause of cancer death among both men and women, making up almost 25% of all cancer deaths Each year, more people die of lung cancer than colon, breast, and prostate cancer combined. The early detection of lung cancer is critical for improving patient outcomes, and automation through advanced image analysis techniques can significantly assist radiologists. This paper presents the development and evaluation of a computer-aided diagnostic system for lung cancer screening, focusing on pulmonary nodule segmentation in low-dose CT images, by employing HighRes3DNet. HighRes3DNet is a specialized 3D convolutional neural network (CNN) architecture based on ResNet principles which uses residual connections to efficiently learn complex spatial features from 3D volumetric data. To address the challenges of processing large CT volumes, an efficient patch-based extraction pipeline was developed. This method dynamically extracts 3D patches during training with a probabilistic approach, prioritizing patches likely to contain nodules while maintaining diversity. Data augmentation techniques, including random flips, affine transformations, elastic deformations, and swaps, were applied in the 3D space to enhance the robustness of the training process and mitigate overfitting. Using a public low-dose CT dataset, this approach achieved a Dice coefficient of 82.65% on the testing set for 3D nodule segmentation, demonstrating precise and reliable predictions. The findings highlight the potential of this system to enhance efficiency and accuracy in lung cancer screening, providing a valuable tool to support radiologists in clinical decision-making. Full article
(This article belongs to the Special Issue Neural Networks and Deep Learning for Biosciences)
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13 pages, 1537 KiB  
Article
Phytochemical Profile, Antioxidant and Antimicrobial Activity of Two Species of Oak: Quercus sartorii and Quercus rysophylla
by Elizabeth Coyotl-Martinez, Juan Alex Hernández-Rivera, José L. Arturo Parra-Suarez, Sandra Raquel Reyes-Carmona and Alan Carrasco-Carballo
Appl. Biosci. 2025, 4(1), 13; https://doi.org/10.3390/applbiosci4010013 - 4 Mar 2025
Viewed by 445
Abstract
The genus Quercus (Fagaceae) is one of the most widely distributed and species-diverse trees in the Northern Hemisphere. The present study addresses the investigation of the phyto-chemical profile by ten assays, the antioxidant activity scavenging of DPPH radicals, total phenolic content, total flavonoids, [...] Read more.
The genus Quercus (Fagaceae) is one of the most widely distributed and species-diverse trees in the Northern Hemisphere. The present study addresses the investigation of the phyto-chemical profile by ten assays, the antioxidant activity scavenging of DPPH radicals, total phenolic content, total flavonoids, and antimicrobial activity against three pathogenic bacteria with the foliage of two species of red oak (Quercus sartorii and Quercus rysophylla). Both species of oak showed a high phenolic content in the aqueous extract (22,342.10 ± 3076.5 mg GAE/kg of plant and 17,747.14 ± 1139.9 mg GAE/kg of plant, respectively). In the flavonoid content, Q. sartorii showed a higher amount in the ethanolic extract (24,587.42 ± 996.3 mg QE/kg of plant), while for Q. rysophylla, it was methanolic extract (19,875.66 ± 2754.01 QE/kg of plant). In the DPPH radical scavenging activity, Q. sartorii showed the highest percentage of inhibition in the methanolic extract (81.14 ± 1.7%), while in Q. rysophylla, it was the ethanolic extract (82.60 ± 2.7%). In the antimicrobial tests, inhibition halos were obtained in the strains Acinetobacter baumannii and Staphylococcus aureus of both species. All this gives a guideline to comprehensively elucidate the metabolites present in these two species for further study and application in the dispute against pathogenic bacteria or in diseases related to the imbalance of reactive oxygen species (ROS). Full article
(This article belongs to the Special Issue Plant Natural Compounds: From Discovery to Application)
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17 pages, 4490 KiB  
Review
Tuning Up In Vitro Growth and Development of Cannabis sativa: Recent Advances in Micropropagational Approach
by S. M. Ahsan, Md. Injamum-Ul-Hoque, Ashim Kumar Das, Shifa Shaffique, Mehedi Hasan, Sang-Mo Kang, In-Jung Lee and Hyong Woo Choi
Appl. Biosci. 2025, 4(1), 12; https://doi.org/10.3390/applbiosci4010012 - 1 Mar 2025
Viewed by 667
Abstract
Cannabis sativa is used for multiple purposes, notably for its medicinal properties. It produces various secondary metabolites, including cannabinoids, terpenes, and flavonoids, which have therapeutic value and typically produce high amounts in female plants. The growth of the global cannabis market has led [...] Read more.
Cannabis sativa is used for multiple purposes, notably for its medicinal properties. It produces various secondary metabolites, including cannabinoids, terpenes, and flavonoids, which have therapeutic value and typically produce high amounts in female plants. The growth of the global cannabis market has led to intensive breeding efforts to develop elite cultivars with enhanced secondary metabolite profiles. As a dioecious and anemophilous plant, it produces staminate and pistillate inflorescences on separate plants and relies on wind for pollination, rendering traditional propagation methods challenging owing to high genetic recombination in progeny. Consequently, asexual propagation (micropropagation) is commonly employed to maintain female clones entirely. Micropropagation/direct organogenesis is a tissue culture technique that produces numerous disease-free clone plants in vitro more rapidly than traditional rooted cuttings. Factors such as sterilization, hormonal balance, explant type, nutrient additives, carbon source, pH, and environment influence the success of cultivar-specific micropropagation. In this review, we discussed how these factors affect cannabis micropropagation based on recent findings, emphasizing the importance of optimizing cultivar-specific protocols for long-term germplasm conservation and efficient breeding based on a mechanistic background. Full article
(This article belongs to the Special Issue Feature Papers in Applied Biosciences 2024)
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24 pages, 6905 KiB  
Article
SALM: A Unified Model for 2D and 3D Region of Interest Segmentation in Lung CT Scans Using Vision Transformers
by Hadrien T. Gayap and Moulay A. Akhloufi
Appl. Biosci. 2025, 4(1), 11; https://doi.org/10.3390/applbiosci4010011 - 17 Feb 2025
Viewed by 570
Abstract
Accurate segmentation of Regions of Interest (ROI) in lung Computed Tomography (CT) is crucial for early lung cancer diagnosis and treatment planning. However, the variability in size, shape, and location of lung lesions, along with the complexity of 3D spatial relationships, poses significant [...] Read more.
Accurate segmentation of Regions of Interest (ROI) in lung Computed Tomography (CT) is crucial for early lung cancer diagnosis and treatment planning. However, the variability in size, shape, and location of lung lesions, along with the complexity of 3D spatial relationships, poses significant challenges. In this work, we propose SALM (Segment Anything in Lung Model), a deep learning model for 2D and 3D ROI segmentation. SALM leverages Vision Transformers, proposing an adaptation of positional encoding functions to effectively capture spatial relationships in both 2D slices and 3D volumes using a single, unified model. Evaluation on the LUNA16 dataset demonstrated strong performance in both modalities. In 2D segmentation, SALM achieved a Dice score of 93% on 124,662 slices. For 3D segmentation using 174 3D images from the same dataset, SALM attained a Dice score of 81.88%. We also tested SALM on an external database (PleThora) on a subset of 255 pulmonary CT from diseased patients, where it achieved a Dice score of 78.82%. These results highlight SALM’s ability to accurately segment lung ROI in both 2D and 3D, demonstrating its potential to improve the accuracy and efficiency of computer-aided diagnosis for lung cancer. Full article
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11 pages, 1345 KiB  
Article
Isolation of Bacteriophages Lytic to Fusobacterium necrophorum Subspecies necrophorum from Bovine Ruminal Fluid and City Sewage
by Sydney E. Schnur, Alyssa Deters, Tara Gaire, Victoriya Volkova, Biswajit Biswas, Daniel U. Thomson and Tiruvoor G. Nagaraja
Appl. Biosci. 2025, 4(1), 10; https://doi.org/10.3390/applbiosci4010010 - 10 Feb 2025
Viewed by 554
Abstract
Fusobacterium necrophorum subspecies necrophorum, a resident of the rumen, is the causative agent of bovine liver abscesses. Currently, tylosin, a macrolide, is used in the feed to reduce liver abscesses. Because macrolides are medically important antibiotics, their use in food animal production [...] Read more.
Fusobacterium necrophorum subspecies necrophorum, a resident of the rumen, is the causative agent of bovine liver abscesses. Currently, tylosin, a macrolide, is used in the feed to reduce liver abscesses. Because macrolides are medically important antibiotics, their use in food animal production is of public health concern. There is significant interest in finding antimicrobial alternatives. Bacteriophages that lyse subsp. necrophorum have the potential to replace tylosin. Our objective was to isolate bacteriophages lytic to subsp. necrophorum. Pooled ruminal fluid from slaughtered cattle and pooled sewage samples were collected and incubated overnight with lysine, and subsp. necrophorum strains and filtrates were spotted on F. necrophorum lawns. Phage plaques were harvested and purified. Bacteriophage isolation frequencies were compared between sample types, sampling dates, and necrophorum strains. Overall relative frequency of isolated bacteriophages lytic to subsp. necrophorum was 17.1%. The frequency of bacteriophage isolation ranged from 0 to 25.4% for ruminal fluid, and from 13.7 to 32.0% for sewage. Isolation frequency was significantly higher in sewage than in ruminal fluid samples (p < 0.01). Isolation rates varied significantly between necrophorum strains. Sewage was a rich source of bacteriophages lytic to necrophorum, which have the potential to be used to prevent liver abscesses. Full article
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32 pages, 1749 KiB  
Review
A Review of Deep Learning Techniques for Leukemia Cancer Classification Based on Blood Smear Images
by Rakhmonalieva Farangis Oybek Kizi, Tagne Poupi Theodore Armand and Hee-Cheol Kim
Appl. Biosci. 2025, 4(1), 9; https://doi.org/10.3390/applbiosci4010009 - 5 Feb 2025
Viewed by 1847
Abstract
This research reviews deep learning methodologies for detecting leukemia, a critical cancer diagnosis and treatment aspect. Using a systematic mapping study (SMS) and systematic literature review (SLR), thirty articles published between 2019 and 2023 were analyzed to explore the advancements in deep learning [...] Read more.
This research reviews deep learning methodologies for detecting leukemia, a critical cancer diagnosis and treatment aspect. Using a systematic mapping study (SMS) and systematic literature review (SLR), thirty articles published between 2019 and 2023 were analyzed to explore the advancements in deep learning techniques for leukemia diagnosis using blood smear images. The analysis reveals that state-of-the-art models, such as Convolutional Neural Networks (CNNs), transfer learning, Vision Transformers (ViTs), ensemble methods, and hybrid models, achieved excellent classification accuracies. Preprocessing methods, including normalization, edge enhancement, and data augmentation, significantly improved model performance. Despite these advancements, challenges such as dataset limitations, the lack of model interpretability, and ethical concerns regarding data privacy and bias remain critical barriers to widespread adoption. The review highlights the need for diverse, well-annotated datasets and the development of explainable AI models to enhance clinical trust and usability. Additionally, addressing regulatory and integration challenges is essential for the safe deployment of these technologies in healthcare. This review aims to guide researchers in overcoming these challenges and advancing deep learning applications to improve leukemia diagnostics and patient outcomes. Full article
(This article belongs to the Special Issue Neural Networks and Deep Learning for Biosciences)
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15 pages, 6395 KiB  
Article
Digital Pathology and Ensemble Deep Learning for Kidney Cancer Diagnosis: Dartmouth Kidney Cancer Histology Dataset
by Muskan Naresh Jain, Salah Mohammed Awad Al-Heejawi, Jamil R. Azzi and Saeed Amal
Appl. Biosci. 2025, 4(1), 8; https://doi.org/10.3390/applbiosci4010008 - 5 Feb 2025
Viewed by 935
Abstract
Kidney cancer has become a major global health issue over time, showing how early detection can play a very important role in mediating the disease. Traditional histological image analysis is recognized as the clinical gold standard for diagnosis, although it is highly manual [...] Read more.
Kidney cancer has become a major global health issue over time, showing how early detection can play a very important role in mediating the disease. Traditional histological image analysis is recognized as the clinical gold standard for diagnosis, although it is highly manual and labor-intensive. Due to this issue, many are interested in computer-aided diagnostic technologies to assist pathologists in their diagnostics. Specifically, deep learning (DL) has become a viable remedy in this field. Nonetheless, the capacity of existing DL models to extract comprehensive visual features for accurate classification is limited. Toward the end, this study proposes using ensemble models that combine the strengths of multiple transformers and deep learning model architectures. By leveraging the collective knowledge of these models, the ensemble enhances classification performance and enables more precise and effective kidney cancer detection. This study compares the performance of these suggested models to previous studies, all of which used the publicly accessible Dartmouth Kidney Cancer Histology Dataset. This study showed that the Vision Transformers, with an average accuracy of over 99%, were able to achieve high detection accuracy across all complete slide picture patches. In particular, the CAiT, DeiT, ViT, and Swin models outperformed ResNet. All things considered, the Vision Transformers consistently produced an average accuracy of 98.51% across all five-folds. These results demonstrated that Vision Transformers might perform well and successfully identify important features from smaller patches. Through utilizing histopathological images, our findings will assist pathologists in diagnosing kidney cancer, resulting in early detection and increased patient survival rates. Full article
(This article belongs to the Special Issue Neural Networks and Deep Learning for Biosciences)
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27 pages, 747 KiB  
Review
Lactiplantibacillus plantarum, the Integral Member of Vegetable Fermentations
by Spiros Paramithiotis
Appl. Biosci. 2025, 4(1), 7; https://doi.org/10.3390/applbiosci4010007 - 5 Feb 2025
Viewed by 949
Abstract
Lactiplantibacillus plantarum is omnipresent in vegetable fermentations. Its large metabolic capacity and its ability to adapt to the fermenting microenvironment enable this species, in many cases, to dominate the microecosystem and drive the fermentation. In addition, its metabolic capacity enables it to produce [...] Read more.
Lactiplantibacillus plantarum is omnipresent in vegetable fermentations. Its large metabolic capacity and its ability to adapt to the fermenting microenvironment enable this species, in many cases, to dominate the microecosystem and drive the fermentation. In addition, its metabolic capacity enables it to produce bioactive compounds of great interest for human health. These attributes have directed research for many decades. The widespread application of next-generation sequencing approaches has enabled the genotypic verification of the phenotypically assessed attributes and supplemented them with novel insights, justifying the characterization of a multifunctional tool that has been awarded to this species. However, there are still issues that need to be properly addressed in order to improve our understanding of the microecosystem functionality and to enhance our knowledge regarding the capacities of this species. The aim of the present article is to collect and critically discuss the available information on Lp. plantarum subsistence in vegetable fermentations. Full article
(This article belongs to the Special Issue Feature Papers in Applied Biosciences 2024)
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21 pages, 1012 KiB  
Review
Review of the Simulators Used in Pharmacology Education and Statistical Models When Creating the Simulators
by Toshiaki Ara and Hiroyuki Kitamura
Appl. Biosci. 2025, 4(1), 6; https://doi.org/10.3390/applbiosci4010006 - 24 Jan 2025
Viewed by 895
Abstract
Animal experiments have long been used as an educational tool in pharmacological education; however, from the perspective of animal welfare, it is necessary to decrease the number of animals used. ingAlthough using of simulators is effective, the development of these simulators is necessary [...] Read more.
Animal experiments have long been used as an educational tool in pharmacological education; however, from the perspective of animal welfare, it is necessary to decrease the number of animals used. ingAlthough using of simulators is effective, the development of these simulators is necessary when there is no existing simulator for animal experiments. In this review, we describe free, downloadable, and commercial simulators that are currently used in pharmacological education. Furthermore, we introduce two strategies to create simulators of animal experiments: (1) bioassay, and (2) experiments that measure the reaction time. We also describe five sigmoid curves (logistic curve, cumulative distribution function [CDF] of normal distribution, Gompertz curve, von Bertalanffy curve, and CDF of Weibull curve) to fit the results and their inverse functions. Using this strategy, it is possible to create a simulator that calculates the reaction time following drug administration. Moreover, we introduce a statistical model for local anesthetic agents using hierarchical Bayesian modeling. Considering the correlation among estimated parameters, we suggest it is possible to create simulators that give results more similar to those of animal experiments. The pharmacological education will be possible by these simulators at educational institutions where animal experiments are difficult due to various restrictions. It is expected that the number of simulator-based education programs will increase in the future. Full article
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15 pages, 4054 KiB  
Article
Antibiofilm Activity of Protamine Against the Vaginal Candidiasis Isolates of Candida albicans, Candida tropicalis and Candida krusei
by Sivakumar Jeyarajan, Indira Kandasamy, Raja Veerapandian, Jayasudha Jayachandran, Shona Chandrashekar, Kalimuthusamy Natarajaseenivasan, Prahalathan Chidambaram and Anbarasu Kumarasamy
Appl. Biosci. 2025, 4(1), 5; https://doi.org/10.3390/applbiosci4010005 - 23 Jan 2025
Viewed by 940
Abstract
Candida species, normally part of the healthy human flora, can cause severe opportunistic infections when their population increases. This risk is even greater in immunocompromised individuals. Women using intrauterine contraceptive devices (IUDs) are at higher risk for IUD-associated vulvovaginal candidiasis (VVC) because the [...] Read more.
Candida species, normally part of the healthy human flora, can cause severe opportunistic infections when their population increases. This risk is even greater in immunocompromised individuals. Women using intrauterine contraceptive devices (IUDs) are at higher risk for IUD-associated vulvovaginal candidiasis (VVC) because the device provides a surface for biofilm formation. This biofilm formation allows the normal flora to become opportunistic pathogens, leading to symptoms of VVC such as hemorrhage, pelvic pain, inflammation, itching and discharge. VVC is often linked to IUD use, requiring the prompt removal of these devices for effective treatment. This study evaluated the activity of the arginine-rich peptide “protamine” against Candida albicans, Candida tropicalis and Candida krusei isolated from IUD users who had signs of VVC. The antimicrobial activity was measured using the agar disk diffusion and microbroth dilution methods to determine the minimum inhibitory concentration (MIC). The MIC values of protamine against C. albicans, C. tropicalis and C. krusei are 32 μg mL−1, 64 μg mL−1 and 256 μg mL−1, respectively. The determined MIC of protamine was used for a biofilm inhibition assay by crystal violet staining. Protamine inhibited the biofilm formation of the VVC isolates, and its mechanisms were studied through scanning electron microscopy (SEM) and a reactive oxygen species (ROS) assay. The disruption of cell membranes and the induction of oxidative stress appear to be key mechanisms underlying its anti-candidal effects. The results from an in vitro assay support the potential use of protamine as an antibiofilm agent to coat IUDs in the future for protective purposes. Full article
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11 pages, 1036 KiB  
Article
Exploring the Anxiolytic, Antidepressant, and Immunomodulatory Effects of Cannabidiol in Acute Stress Rat Models
by Hristina Zlatanova-Tenisheva, Maria Georgieva-Kotetarova, Natalia Vilmosh, Ilin Kandilarov, Delyan Delev, Tihomir Dermendzhiev and Ilia Dimitrov Kostadinov
Appl. Biosci. 2025, 4(1), 4; https://doi.org/10.3390/applbiosci4010004 - 21 Jan 2025
Cited by 1 | Viewed by 750
Abstract
Cannabidiol (CBD), a non-psychoactive compound derived from Cannabis sativa, is believed to have anxiety-reducing and antidepressant effects. However, existing data are inconsistent, likely due to variations in experimental designs, dosages, and stress models. This study sought to assess the impact of CBD [...] Read more.
Cannabidiol (CBD), a non-psychoactive compound derived from Cannabis sativa, is believed to have anxiety-reducing and antidepressant effects. However, existing data are inconsistent, likely due to variations in experimental designs, dosages, and stress models. This study sought to assess the impact of CBD on anxiety and depression-like behaviors in Wistar rats exposed to acute cold stress, as well as its impact on pro- and anti-inflammatory cytokines. Male rats were treated with CBD (2.5, 5, or 10 mg/kg) or vehicle for 14 days and subjected to behavioral tests, including the elevated plus maze, social interaction, and forced swim tests. Serum levels of cytokines (IL-6, TNF-α, IL-1β, and IL-10) were analyzed post-experiment using ELISA. Results demonstrated a dose-dependent anxiolytic effect of CBD, with significant improvements in social interaction and reductions in anxiety-like behaviors at 5 and 10 mg/kg. All doses of CBD decreased immobility in the forced swim test, suggesting antidepressant effects. Furthermore, CBD selectively lowered IL-6 levels, a key cytokine in acute stress and depression pathogenesis. These findings indicate that CBD has anxiety-reducing and antidepressant properties, partially mediated by modulation of inflammatory processes, particularly IL-6. Full article
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13 pages, 745 KiB  
Review
Does the Use of Two Major Opioids Have an Impact on Improving Pain Treatment and Quality of Life in Cancer Patients?—A Literature Review
by Shirley Duarte, João Rocha-Neves, Marília Dourado and Hugo Ribeiro
Appl. Biosci. 2025, 4(1), 3; https://doi.org/10.3390/applbiosci4010003 - 7 Jan 2025
Viewed by 1060
Abstract
Cancer pain is a highly prevalent problem and one of the most distressing symptoms in cancer patients. The management of cancer pain is one of the most significant challenges in the care of these patients. Cancer pain must be treated quickly and effectively [...] Read more.
Cancer pain is a highly prevalent problem and one of the most distressing symptoms in cancer patients. The management of cancer pain is one of the most significant challenges in the care of these patients. Cancer pain must be treated quickly and effectively as it affects the quality of life and reduces the patient’s life expectancy. Major opioids are recognized by the World Health Organization (WHO) as first-line treatment for moderate to severe cancer pain, but their use is often hampered by individual variations, comorbidities, and complications associated with cancer. Since the simultaneous use of two major opioids has become frequent, a narrative review was conducted, whose main objectives were to evaluate whether the combination of two major opioids improves pain and quality of life in cancer patients, considering their pharmacodynamic and pharmacokinetic properties and evaluate the impact of this combination on the frequency and intensity of side effects. The search for information was carried out in evidence-based medicine databases, namely PubMed/MEDLINE, Cochrane Library, Database of Abstracts of Reviews of Effects, National Guideline Clearinghouse, NHS Evidence and Index das Revistas Médicas Portuguesas using the MeSH terms “opioids” and “quality of life”. Articles and documents published between 1 January 2010 and 1 June 2023, in English, Portuguese and Spanish, were considered, including original articles, meta-analyses, systematic reviews and clinical guidelines. A total of 342 articles were retrieved and of these, only 13 were selected for full reading. The combination of opioids is based on the principle that different opioids act through different mechanisms, which can reduce dose-related adverse effects. Simultaneous use of two major opioids may allow for more modest increases in the equivalent dose of the second opioid, providing better pain control and reduced side effects such as nausea, vomiting, and constipation. More studies on the combination of opioids are needed to improve cancer pain treatment. The lack of personalized therapies limits the effectiveness of opioids, and variability in treatment responses requires individualized approaches. Personalized medicine, based on pharmacogenomics, is one of the most promising strategies to optimize pain relief and reduce adverse effects. Full article
(This article belongs to the Special Issue Feature Papers in Applied Biosciences 2024)
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18 pages, 2058 KiB  
Article
Multi-Criteria Decision Analysis in Drug Discovery
by Rafał A. Bachorz, Michael S. Lawless, David W. Miller and Jeremy O. Jones
Appl. Biosci. 2025, 4(1), 2; https://doi.org/10.3390/applbiosci4010002 - 6 Jan 2025
Viewed by 1375
Abstract
Drug discovery is inherently a multi-criteria optimization problem. In the first instance, it involves a tremendously large chemical space, where each compound can be characterized by multiple molecular and biological properties. Modern computational approaches try to efficiently explore the chemical space in search [...] Read more.
Drug discovery is inherently a multi-criteria optimization problem. In the first instance, it involves a tremendously large chemical space, where each compound can be characterized by multiple molecular and biological properties. Modern computational approaches try to efficiently explore the chemical space in search of molecules with the desired combination of properties. For example, Pareto optimizers identify a so-called “Pareto front”, a set of non-dominated solutions. From a qualitative perspective, all solutions on the front are potentially equally desirable, each expressing a trade-off between the goals. However, often there is a need to weight the objectives differently, depending on their perceived importance. To address this, we recently implemented a new Multi-Criteria Decision Analysis (MCDA) method as part of the AI-powered Drug Design (AIDDTM) technology initiative. This allows the user to weight various objective functions differently, which, in turn, efficiently directs the generative chemistry process toward the desired areas in chemical space. Full article
(This article belongs to the Special Issue Neural Networks and Deep Learning for Biosciences)
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21 pages, 709 KiB  
Review
Evaluating the Potential of Herbal Extracts as Treatment in Immune Thrombocytopenia: A Review of Evidence and Limitations
by Russell W. Wiggins, Jihoo Woo, John Nicholas Cauba and Shizue Mito
Appl. Biosci. 2025, 4(1), 1; https://doi.org/10.3390/applbiosci4010001 - 27 Dec 2024
Viewed by 1617
Abstract
Immune thrombocytopenia, formerly idiopathic thrombocytopenia purpura (ITP), is an autoimmune disease characterized by the depletion of platelets below 100,000/µL when other causes of thrombocytopenia have been ruled out. It is associated with several infectious pathologies, disease states, and as a known side effect [...] Read more.
Immune thrombocytopenia, formerly idiopathic thrombocytopenia purpura (ITP), is an autoimmune disease characterized by the depletion of platelets below 100,000/µL when other causes of thrombocytopenia have been ruled out. It is associated with several infectious pathologies, disease states, and as a known side effect and complication of several drugs and chemotherapies. Standard treatment calls for glucocorticoid-mediated immunosuppression, intravenous immunoglobin transfusion, platelet stimulation, platelet transfusion, and splenectomy in instances of chronic and severe disease. While standard treatments are often effective, some cases prove resistant, and more commonly, some patients are unable to tolerate standard treatment protocols or opt out of surgical intervention. In addition, second-line therapies can be unfeasibly expensive and are associated with side effects themselves. Therefore, for a subset of patients afflicted by immune thrombocytopenia, the exploration of alternative treatment methods is needed in order to ease their burden of disease. Emerging evidence suggests that plant-derived extracts, traditionally used in regions such as Asia and Africa to manage acute thrombocytopenia, hold promise as alternative or adjunctive therapies for the mentioned subset of patients. These natural compounds may provide a cost-effective and less invasive option, potentially bridging gaps in current treatment regimens. We propose these extracts may play a role in fulfilling this deficiency in current treatment protocols. With this review, we aim to characterize and compile evidence that various organic extracts and compounds may be utilized to improve outcomes in these patients. By highlighting their clinical relevance and potential for integration into ITP treatment protocols, this manuscript underscores the importance of expanding the alternative therapies for ITP to improve patient outcomes and reduce treatment burdens. Full article
(This article belongs to the Special Issue Plant Natural Compounds: From Discovery to Application)
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