[解决医学预测模型中阶级不平衡的当前方法和挑战]。

Q1 Medicine
X L Meng, Y T Wang, X Zhang, S Y Zhan, S F Wang
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引用次数: 0

摘要

随着个性化医疗的兴起和大数据技术的快速发展,医学预测模型在疾病诊断、预后评估、风险分层等方面的作用越来越重要。然而,类不平衡是医疗数据中常见的问题,它会导致模型过度向多数类训练,而不是向少数类训练,从而影响检测能力和临床应用价值。本文系统总结了解决班级失衡的传统方法,包括数据预处理和算法层面的策略,并介绍了生成对抗网络和迁移学习等新技术的应用,提出了解决班级失衡的关键考虑因素和潜在的研究重点,为研究者选择合适的策略提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Current approaches and challenges in addressing class imbalance in medical prediction models].

With the rise of personalized medicine and the rapid development of big data technology, medical prediction models have become increasingly important in disease diagnosis, prognosis assessment, and risk stratification. However, class imbalance is a common problem in medical data, which can result in models being overly trained toward the majority class rather than the minority class, influencing the detection power and clinical application value. This paper systematically summarizes traditional methods in addressing class imbalance, including data pre-processing and algorithm level strategies, and introduces the applications of new technologies such as generative adversarial networks and transfer learning and suggests key considerations and potential research focus for addressing class imbalance to provide reference for researchers to select appropriate strategies.

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来源期刊
中华流行病学杂志
中华流行病学杂志 Medicine-Medicine (all)
CiteScore
5.60
自引率
0.00%
发文量
8981
期刊介绍: Chinese Journal of Epidemiology, established in 1981, is an advanced academic periodical in epidemiology and related disciplines in China, which, according to the principle of integrating theory with practice, mainly reports the major progress in epidemiological research. The columns of the journal include commentary, expert forum, original article, field investigation, disease surveillance, laboratory research, clinical epidemiology, basic theory or method and review, etc.  The journal is included by more than ten major biomedical databases and index systems worldwide, such as been indexed in Scopus, PubMed/MEDLINE, PubMed Central (PMC), Europe PubMed Central, Embase, Chemical Abstract, Chinese Science and Technology Paper and Citation Database (CSTPCD), Chinese core journal essentials overview, Chinese Science Citation Database (CSCD) core database, Chinese Biological Medical Disc (CBMdisc), and Chinese Medical Citation Index (CMCI), etc. It is one of the core academic journals and carefully selected core journals in preventive and basic medicine in China.
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