Advancements in biomedical technologies have significantly facilitated the diagnosis and monitoring of diseases. Nonetheless, traditional diagnostic methods can be labor-intensive, require expert interpretation of results, and may be time-consuming. In recent years, machine learning (ML) has emerged as a transformative technology in the field of biomedicine. Machine learning models can discern trends in data that may be difficult for humans to detect, including those found in medical imaging, genetic sequences, and physiological readings. These novel data technologies are demonstrating efficacy in enhancing illness diagnosis, formulating personalized treatment alternatives, and facilitating the early identification of cancer, cardiovascular diseases, and neurological disorders.
This Research Topic seeks to analyze the role of machine learning in biomedical assessment and identification tasks. The aim is to investigate methods by which machine learning algorithms, encompassing traditional classifiers and deep learning models, can enhance the speed, accuracy, and scalability of diagnostic procedures. This topic requests authors to address novel model structure designs, innovative feature selection techniques, the development of explainable models, and their adaptation for clinical utility. Emphasis is placed on integrating knowledge from medicine, bioinformatics, and computer science to address challenges. The utilization of extensive data sets, alongside novel methodologies from artificial intelligence and learning technologies, results in enhanced and more dependable diagnostic tools. The goal is to ascertain the application and evaluation of these methodologies in real-world healthcare contexts.
This Research Topic invites contributions that focus on the development, validation, and application of machine learning methods for biomedical diagnosis. We welcome original research articles, reviews, and case studies that address the following themes:
• Machine learning for medical image analysis • Predictive models for disease diagnosis • Deep learning for signal and genomic data • Explainable AI in clinical decision-making • Federated and privacy-preserving learning in healthcare • Model generalization and validation across populations • Integration of ML models into diagnostic workflows
Please note that manuscripts consisting solely of bioinformatics or computational analysis of public omics databases that are not supplemented by relevant functional validation (clinical cohort or biological validation in vitro or in vivo) are out of scope for this Research Topic.
Article types and fees
This Research Topic accepts the following article types, unless otherwise specified in the Research Topic description:
Case Report
Clinical Trial
Editorial
FAIR² Data
FAIR² DATA Direct Submission
General Commentary
Hypothesis and Theory
Methods
Mini Review
Articles that are accepted for publication by our external editors following rigorous peer review incur a publishing fee charged to Authors, institutions, or funders.
Article types
This Research Topic accepts the following article types, unless otherwise specified in the Research Topic description:
Case Report
Clinical Trial
Editorial
FAIR² Data
FAIR² DATA Direct Submission
General Commentary
Hypothesis and Theory
Methods
Mini Review
Opinion
Original Research
Perspective
Policy and Practice Reviews
Review
Systematic Review
Technology and Code
Keywords: Machine Learning, Biomedical Diagnosis, Medical Imaging, Deep Learning, Predictive Models, Clinical Decision Support, Healthcare AI, Personalized Medicine
Important note: All contributions to this Research Topic must be within the scope of the section and journal to which they are submitted, as defined in their mission statements. Frontiers reserves the right to guide an out-of-scope manuscript to a more suitable section or journal at any stage of peer review.