Enhancing interpretability and accuracy of AI models in healthcare: a comprehensive review on challenges and future directions.

IF 2.9 Q2 ROBOTICS Frontiers in Robotics and AI Pub Date : 2024-11-28 eCollection Date: 2024-01-01 DOI:10.3389/frobt.2024.1444763
Mohammad Ennab, Hamid Mcheick
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Abstract

Artificial Intelligence (AI) has demonstrated exceptional performance in automating critical healthcare tasks, such as diagnostic imaging analysis and predictive modeling, often surpassing human capabilities. The integration of AI in healthcare promises substantial improvements in patient outcomes, including faster diagnosis and personalized treatment plans. However, AI models frequently lack interpretability, leading to significant challenges concerning their performance and generalizability across diverse patient populations. These opaque AI technologies raise serious patient safety concerns, as non-interpretable models can result in improper treatment decisions due to misinterpretations by healthcare providers. Our systematic review explores various AI applications in healthcare, focusing on the critical assessment of model interpretability and accuracy. We identify and elucidate the most significant limitations of current AI systems, such as the black-box nature of deep learning models and the variability in performance across different clinical settings. By addressing these challenges, our objective is to provide healthcare providers with well-informed strategies to develop innovative and safe AI solutions. This review aims to ensure that future AI implementations in healthcare not only enhance performance but also maintain transparency and patient safety.

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提高医疗保健领域人工智能模型的可解释性和准确性:关于挑战和未来方向的全面综述。
人工智能(AI)在诊断成像分析和预测建模等关键医疗保健任务的自动化方面表现出卓越的性能,往往超越了人类的能力。将人工智能融入医疗保健有望大幅改善患者的治疗效果,包括更快的诊断和个性化的治疗方案。然而,人工智能模型往往缺乏可解释性,导致其在不同患者群体中的性能和通用性面临重大挑战。这些不透明的人工智能技术引发了严重的患者安全问题,因为不可解释的模型可能会因医疗服务提供者的误解而导致不当的治疗决策。我们的系统性综述探讨了人工智能在医疗保健领域的各种应用,重点关注对模型可解释性和准确性的关键评估。我们确定并阐明了当前人工智能系统最显著的局限性,例如深度学习模型的黑箱性质以及不同临床环境下的性能差异。通过应对这些挑战,我们的目标是为医疗服务提供者提供充分知情的策略,以开发创新、安全的人工智能解决方案。本综述旨在确保未来在医疗保健领域实施的人工智能不仅能提高性能,还能保持透明度和患者安全。
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来源期刊
CiteScore
6.50
自引率
5.90%
发文量
355
审稿时长
14 weeks
期刊介绍: Frontiers in Robotics and AI publishes rigorously peer-reviewed research covering all theory and applications of robotics, technology, and artificial intelligence, from biomedical to space robotics.
期刊最新文献
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