人工智能驱动的疟疾诊断:一项对诺氏疟原虫影响的系统综述。

IF 2.5 3区 医学 Q2 PARASITOLOGY
Jia Ying Tiong , Khairunnisa Hasikin , Romano Ngui , Paul C.S. Divis , Chu Kiong Loo , Khin Wee Lai , Fei Wen Cheong , Wan Yusoff Wan Sulaiman
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引用次数: 0

摘要

诺氏疟原虫已成为一种重大的人畜共患疟疾威胁,特别是在其发病率持续上升的东南亚。由于不同阶段的疾病严重程度和传播动态各不相同,因此及时准确诊断其血液分期对于有效诊断和治疗至关重要。显微镜检查是疟疾诊断的金标准;然而,它是劳动密集型的,需要专业的翻译。这使得它容易发生变异和可能的错误分类,特别是在形态相同的疟原虫物种之间。人工智能(AI)驱动方法的最新进展,特别是深度学习,为帮助显微镜学家自动化血液阶段识别、减少诊断变异性和提高效率提供了巨大的潜力,而无需取代专家验证。然而,基于人工智能的诺氏疟原虫血分期分类研究仍然有限。本系统综述以诺氏疟原虫为重点,严格评估了用于疟原虫血期分类的数据集、预处理方法和深度学习技术。与以往主要解决物种分类问题的综述不同,本研究对人工智能驱动的血液阶段识别进行了深入的比较分析,强调了卷积神经网络(cnn)、迁移学习、集成学习和YOLO和Faster R-CNN等目标检测模型的有效性。此外,这篇综述强调了关键的挑战,包括有限的注释数据集、类不平衡和持续存在的可解释性问题。通过加强数据集管理、领域适应策略和可解释的人工智能方法来解决这些差距,对于推进人工智能驱动的诺氏疟原虫诊断至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Insights into AI-Driven malaria diagnosis: A systematic review with implications for Plasmodium knowlesi
Plasmodium knowlesi has emerged as a significant zoonotic malaria threat, particularly in Southeast Asia, where its incidence continues to rise. Timely and accurate diagnosis of its blood stages is critical for effective diagnosis and treatment, as disease severity and transmission dynamics vary across different stages. Microscopic examination is the gold standard for malaria diagnosis; however, it is labour-intensive and requires professional interpretation. This makes it prone to variability and possible misclassification, especially among morphologically identical Plasmodium species. Recent advancements in artificial intelligence (AI)-driven approaches, particularly deep learning, offer significant potential to assist microscopists in automating blood-stage identification, reducing diagnostic variability, and improving efficiency without replacing expert validation. However, the research on AI-based classification of P. knowlesi blood stages remains limited. This systematic review critically evaluates the datasets, preprocessing methods, and deep learning techniques used for Plasmodium blood-stage classification with a specific focus on P. knowlesi. Unlike previous reviews that primarily address species classification, this study provides an in-depth comparative analysis of AI-driven blood-stage identification, emphasizing the effectiveness of convolutional neural networks (CNNs), transfer learning, ensemble learning, and object detection models such as YOLO and Faster R-CNN. Additionally, this review highlights key challenges, including limited annotated datasets, class imbalance, and interpretability concerns that persist. Addressing these gaps through enhanced dataset curation, domain adaptation strategies, and explainable AI approaches will be crucial in advancing AI-driven P. knowlesi diagnostics.
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来源期刊
Acta tropica
Acta tropica 医学-寄生虫学
CiteScore
5.40
自引率
11.10%
发文量
383
审稿时长
37 days
期刊介绍: Acta Tropica, is an international journal on infectious diseases that covers public health sciences and biomedical research with particular emphasis on topics relevant to human and animal health in the tropics and the subtropics.
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