Robustness and evolvability are essential properties to the evolution of biological networks. To determine if a biological network is robust and/or evolvable, it is required to compare its functions before and after mutations. However, this sometimes takes a high computational cost as the network size grows. Here, we develop a predictive method to estimate the robustness and evolvability of biological networks without an explicit comparison of functions. We measure antifragility in Boolean network models of biological systems and use this as the predictor. Antifragility occurs when a system benefits from external perturbations. By means of the differences of antifragility between the original and mutated biological networks, we train a convolutional neural network (CNN) and test it to classify the properties of robustness and evolvability. We found that our CNN model successfully classified the properties. Thus, we conclude that our antifragility measure can be used as a predictor of the robustness and evolvability of biological networks.
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http://dx.doi.org/10.3390/e22090986 | DOI Listing |
Ancestral sequence reconstruction (ASR) is typically performed using homogeneous evolutionary models, which assume that the same substitution propensities affect all sites and lineages. These assumptions are routinely violated: heterogeneous structural and functional constraints favor different amino acid states at different sites, and these constraints often change among lineages as epistatic substitutions accrue at other sites. To evaluate how realistic violations of the homogeneity assumption affect ASR, we developed site-specific substitution models and parameterized them using data from deep mutational scanning experiments on three protein families; we then used these models to perform ASR on the empirical alignments and on alignments simulated under heterogeneous conditions derived from the experiments.
View Article and Find Full Text PDFJ Trauma Acute Care Surg
January 2025
From the Department of Orthopedic Surgery (I.F., S.B., M.T., D.P., R.B., N.G.), Chaim Sheba Medical Center at Tel Hashomer, Tel Aviv University Faculty of Medicine, Tel Aviv, Israel.
Background: Combat-related injuries have evolved in urban warfare because of close-contact engagements and high-energy blast injuries, with rapid medical evacuation improving survival rates. This study analyzes injury patterns and outcomes in the Gaza conflict, emphasizing the need to optimize trauma care protocols in modern combat environments, particularly because of the unique proximity of conflict zones to tertiary trauma centers.
Methods: A retrospective study was conducted at a single center involving 189 patients evacuated by helicopter to a Level I tertiary trauma center.
JAMIA Open
February 2025
Department of Medical Informatics, Institute for Community Medicine, University Medicine Greifswald, Greifswald D-17475, Germany.
Objectives: The continuous integration of artificial intelligence (AI) into clinical settings requires the development of up-to-date and robust guidelines and standard frameworks that consider the evolving challenges of AI implementation in medicine. This review evaluates the quality of these guideline and summarizes ethical frameworks, best practices, and recommendations.
Materials And Methods: The Appraisal of Guidelines, Research, and Evaluation II tool was used to assess the quality of guidelines based on 6 domains: scope and purpose, stakeholder involvement, rigor of development, clarity of presentation, applicability, and editorial independence.
J Pain Res
December 2024
Anesthesiology and Pain Department, Fondazione Istituto G. Giglio Cefalù, Palermo, Italy.
Background: Pain medicine care has expanded to encompass a wider range of conditions, necessitating updated education and training for pain specialists to utilize emerging technologies effectively. A national survey was conducted through several verified Pain organizations regarding pain physician employers' perspectives on pain medicine fellowship training and education. The survey aimed to gather insights from a diverse range of geographic locations, practice types (academic and private practice), and practice settings.
View Article and Find Full Text PDFiScience
December 2024
Department of Biological Sciences, Tata Institute of Fundamental Research, Mumbai, Maharashtra 400005, India.
The development of a system to leverage molecular oxygen for energy-efficient pathways required several molecular adaptations. The enzymatic reduction of dioxygen to water is one such prominent evolutionary molecular trait. Microbes evolved several enzymes capable of reducing dioxygen and, interestingly, retained multiples of them in their genomes.
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