Computer-Assisted Analysis of Biomedical Images
Leonardo Rundo

TL;DR
This paper discusses the development of advanced computer-assisted methods for biomedical image analysis, aiming to improve clinical decision support and facilitate personalized medicine through innovative machine learning techniques.
Contribution
It introduces novel computational approaches tailored to biomedical imaging challenges, enhancing traditional image processing with AI for clinical and biological insights.
Findings
Improved accuracy in biomedical image interpretation
Enhanced support for clinical decision-making
Facilitation of personalized medicine strategies
Abstract
Nowadays, the amount of heterogeneous biomedical data is increasing more and more thanks to novel sensing techniques and high-throughput technologies. In reference to biomedical image analysis, the advances in image acquisition modalities and high-throughput imaging experiments are creating new challenges. This huge information ensemble could overwhelm the analytic capabilities needed by physicians in their daily decision-making tasks as well as by biologists investigating complex biochemical systems. In particular, quantitative imaging methods convey scientifically and clinically relevant information in prediction, prognosis or treatment response assessment, by also considering radiomics approaches. Therefore, the computational analysis of medical and biological images plays a key role in radiology and laboratory applications. In this regard, frameworks based on advanced Machine…
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Taxonomy
TopicsAI in cancer detection · Medical Image Segmentation Techniques · Radiomics and Machine Learning in Medical Imaging
