A review and systematic guide to counteracting medical data scarcity for AI applications

Fabian Gröger , Ludovic Amruthalingam , Simone Lionetti , Alexander A. Navarini , Fabian Ille , Marc Pouly
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引用次数: 0

Abstract

Artificial intelligence has the potential to improve the scalability, objectivity, and precision of the overall healthcare system. Such improvements are possible due to the growth of medical databases and the progress of deep learning approaches, which enable automated analysis of both structured and unstructured data. While the overall size of medical datasets continues to increase, data scarcity remains problematic due to challenges in the medical domain, such as rare diseases, difficult and expensive annotation, and restricted population coverage. Machine learning models trained without appropriate measures to counteract this scarcity are often biased and unreliable in real-world settings. This paper will systematically examine the different challenges arising from medical data scarcity, their implications, and state-of-the-art mitigation approaches. It includes studies from the general machine learning community and describes how their findings translate to medical applications. This review is meant as a practical resource for researchers who want to develop reliable machine learning models for medical applications when data is scarce.
人工智能应用中应对医疗数据稀缺的综述和系统指南
人工智能有潜力提高整个医疗保健系统的可扩展性、客观性和准确性。由于医疗数据库的增长和深度学习方法的进步,这种改进成为可能,深度学习方法可以自动分析结构化和非结构化数据。虽然医疗数据集的总体规模不断增加,但由于医疗领域的挑战,例如罕见疾病、困难和昂贵的注释以及人口覆盖范围有限,数据稀缺性仍然存在问题。没有适当措施来抵消这种稀缺性的机器学习模型在现实世界中往往是有偏见和不可靠的。本文将系统地研究医疗数据稀缺所带来的不同挑战,其影响以及最先进的缓解方法。它包括来自一般机器学习社区的研究,并描述了他们的发现如何转化为医学应用。这篇综述旨在为那些希望在数据稀缺的情况下为医疗应用开发可靠的机器学习模型的研究人员提供实用资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
5.90
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