对与患者伤害索赔相关的精神病学数据进行机器学习分类。

IF 1.3 4区 医学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Methods of Information in Medicine Pub Date : 2023-12-01 Epub Date: 2023-07-24 DOI:10.1055/s-0043-1771378
Martti Juhola, Tommi Nikkanen, Juho Niemi, Maiju Welling, Olli Kampman
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引用次数: 0

摘要

背景:不良事件在医疗保健中很常见。与其他医疗专业相比,精神科治疗中的患者伤害索赔似乎并不常见。精神病学中最常见的患者伤害索赔类型包括诊断缺陷、无法阻止的自杀或被视为不必要或有害的强制治疗:目的是研究是否有可能形成与赔偿索赔中精神病学评估相关的患者伤害类型的不同类别,并以这些类别为基础进行机器学习分类。此外,另一个目标是对赔偿申请的积极和消极决定进行二元分类:方法:采用人工智能的机器学习方法,将芬兰精神科专家对患者伤害赔偿申请的评估分为六个不同的类别(称为类别)。此外,还将相同的数据分为两类,以测试是否可以根据已知的决定(接受或拒绝赔偿要求)对数据案例进行分类:结果:前一项分类任务产生了相对较好的分类结果,但需要区分不同的类别。相反,后者更为复杂。不过,通过在分类前的预处理阶段生成人工数据案例,可以提高这两项任务的分类准确率。当使用随机森林方法进行分类时,这种预处理将六个类别的分类准确率提高到 88%,将二元分类的准确率提高到 89%:结果表明,所确定的目标是可以合理解决的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Classification of Psychiatric Data Associated with Compensation Claims for Patient Injuries.

Background: Adverse events are common in health care. In psychiatric treatment, compensation claims for patient injuries appear to be less common than in other medical specialties. The most common types of patient injury claims in psychiatry include diagnostic flaws, unprevented suicide, or coercive treatment deemed as unnecessary or harmful.

Objectives: The objective was to study whether it is possible to form different categories of patient injury types associated with the psychiatric evaluations of compensation claims and to base machine learning classification on these categories. Further, the binary classification of positive and negative decisions for compensation claims was the other objective.

Methods: Finnish psychiatric specialist evaluations for the compensation claims of patient injuries were classified into six different categories called classes applying the machine learning methods of artificial intelligence. In addition, another classification of the same data into two classes was performed to test whether it was possible to classify data cases according to their known decisions, either accepted or declined compensation claim.

Results: The former classification task produced relatively good classification results subject to separating between different classes. Instead, the latter was more complex. However, classification accuracies of both tasks could be improved by using the generation of artificial data cases in the preprocessing phase before classifications. This preprocessing improved the classification accuracy of six classes up to 88% when the method of random forests was used for classification and that of the binary classification to 89%.

Conclusion: The results show that the objectives defined were possible to solve reasonably.

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来源期刊
Methods of Information in Medicine
Methods of Information in Medicine 医学-计算机:信息系统
CiteScore
3.70
自引率
11.80%
发文量
33
审稿时长
6-12 weeks
期刊介绍: Good medicine and good healthcare demand good information. Since the journal''s founding in 1962, Methods of Information in Medicine has stressed the methodology and scientific fundamentals of organizing, representing and analyzing data, information and knowledge in biomedicine and health care. Covering publications in the fields of biomedical and health informatics, medical biometry, and epidemiology, the journal publishes original papers, reviews, reports, opinion papers, editorials, and letters to the editor. From time to time, the journal publishes articles on particular focus themes as part of a journal''s issue.
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