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Biotechnology Frontier

Biotechnology Frontier (Yearly) is an international comprehensive professional academic journal of Ivy Publisher, concerning the development of biotechnology technology. The main focus of the journal is the academic papers, comments and research review of latest improvement in the fields of Biotechnology technology, microorganism, medicine, agriculture & forestry, edible fungus, light food, environmental protection and related, aiming at... [More] Biotechnology Frontier (Yearly) is an international comprehensive professional academic journal of Ivy Publisher, concerning the development of biotechnology technology. The main focus of the journal is the academic papers, comments and research review of latest improvement in the fields of Biotechnology technology, microorganism, medicine, agriculture & forestry, edible fungus, light food, environmental protection and related, aiming at providing a good communication platform to transfer, share and discuss the theoretical and technical development of electrical theory development for professionals, scholars, researchers and administrative staffs in this field, reflecting the academic front level, promote academic change and foster the development of biotechnology technology.

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ISSN Print:2327-0837

ISSN Online:2327-0888

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Paper Infomation

Artificial Intelligence in Medical Image‑Aided Diagnosis: An Overview

Full Text(PDF, 413KB)

Author: Beibei Hu, Liang Zhou, Qiong Ni

Abstract: This paper provides a comprehensive review of artificial intelligence (AI) applications in medical imaging diagnosis and assesses its clinical translation challenges. Through systematic review and meta-analysis, we evaluated AI diagnostic performance across imaging modalities including ophthalmology, respiratory medicine, and breast imaging. Results show that AI models consistently achieve high sensitivity and specificity, with AUC values above 0.9. However, real-world implementation remains limited due to methodological weaknesses, bias issues, and lack of external validation. The study emphasizes the need for a shift from accuracy-focused development to trustworthy, fair, and sustainable AI systems. We propose a novel framework for integrating AI into clinical practice through transparent reporting, human-AI collaboration, and rigorous validation, offering practical guidance for future AI deployment in healthcare.

Keywords: Medical Imaging, Clinical Translation, Trustworthy AI, Diagnosis

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