AI-Assisted Medical Diagnostics
English

About The Book

<p>This book offers a detailed clinically oriented examination of the integration of artificial intelligence (AI) and machine learning (ML) into medical diagnostics and healthcare delivery. Designed as a practical resource for clinicians researchers and healthcare administrators it systematically explores how AI technologies are being adopted while critically addressing the challenges and opportunities presented by their real-world implementation.</p><p>The book begins by establishing foundational concepts and definitions providing a clear overview of the current landscape and the potential of AI in enhancing diagnostic accuracy personalizing patient care and streamlining hospital operations. It highlights the dual nature of AI's impact showcasing improvements in efficiency and outcomes but also discussing significant risks such as data privacy concerns regulatory challenges algorithmic bias and the dangers of overfitting and data leakage.</p><p>A central focus of the book is its detailed exploration of the technical underpinnings of ML in medicine. It explores model evaluation emphasizing the limitations of traditional metrics like accuracy the importance of robust validation and the need for comprehensive performance measures such as learning curves confusion matrices and external testing. Special attention is given to the evaluation of ML algorithms for image classification and to the selection of appropriate models for specific diagnostic tasks.</p><p>The book also introduces a standardized validation framework aligned with regulatory guidance including clinically oriented composite utility metrics and protocols for ongoing model monitoring. It critically examines the impact of feature selection and data leakage through case studies demonstrating how methodological pitfalls can lead to misleading claims of performance.</p><p>Recognizing the complexity of real-world deployment the book provides practical tools and checklists for clinicians to appraise AI solutions operational frameworks for safe integration and guidance on governance and continuous learning. Ethical legal and societal considerations are woven throughout underscoring the importance of transparency interdisciplinary collaboration and education.</p><p>By combining technical rigor with clinical relevance the book empowers healthcare professionals to critically evaluate safely integrate and effectively leverage AI tools for improved patient outcomes. It serves as an essential resource for navigating the evolving landscape of AI-assisted medical diagnostics supporting responsible and equitable innovation in healthcare.</p>
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