使用社区检测进行临床亚型分型:效用有限?

IF 2.4 3区 医学 Q2 PSYCHIATRY
Joost A. Agelink van Rentergem, Joe Bathelt, Hilde M. Geurts
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引用次数: 2

摘要

为了发现精神病学亚型,研究人员正在采用一种称为社区检测的方法。这种方法在精神病学文献中没有受到与传统聚类方法相同的审查。此外,许多社区检测算法在开发时没有考虑精神病学样本量和变量数。我们的目标是为研究人员提供这种方法的实用性。我们介绍了社区检测算法,具体描述了基于相关性和基于距离的社区检测之间的关键区别。我们将社区检测结果与代表典型精神病学环境的传统方法的模拟研究结果进行了比较,使用了三种亚型可能存在差异的概念。结果我们发现,在几种社区检测算法中,恢复的子组数量往往不正确。基于相关性的社区检测比基于距离的社区检测表现更好,并且在较小的样本量下表现相对较好。潜在剖面分析在恢复亚型上更为一致。方法是否成功取决于如何引入差异。结论潜在剖面分析等传统方法仍是合理的选择。此外,结果取决于亚型分析的假设和理论选择,研究人员在得出亚型结论之前需要考虑这些假设和理论选择。建议使用多个子类型方法来建立方法依赖关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Clinical subtyping using community detection: Limited utility?

Clinical subtyping using community detection: Limited utility?

Objectives

To discover psychiatric subtypes, researchers are adopting a method called community detection. This method was not subjected to the same scrutiny in the psychiatric literature as traditional clustering methods. Furthermore, many community detection algorithms have been developed without psychiatric sample sizes and variable numbers in mind. We aim to provide clarity to researchers on the utility of this method.

Methods

We provide an introduction to community detection algorithms, specifically describing the crucial differences between correlation-based and distance-based community detection. We compare community detection results to results of traditional methods in a simulation study representing typical psychiatry settings, using three conceptualizations of how subtypes might differ.

Results

We discovered that the number of recovered subgroups was often incorrect with several community detection algorithms. Correlation-based community detection fared better than distance-based community detection, and performed relatively well with smaller sample sizes. Latent profile analysis was more consistent in recovering subtypes. Whether methods were successful depended on how differences were introduced.

Conclusions

Traditional methods like latent profile analysis remain reasonable choices. Furthermore, results depend on assumptions and theoretical choices underlying subtyping analyses, which researchers need to consider before drawing conclusions on subtypes. Employing multiple subtyping methods to establish method dependency is recommended.

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来源期刊
CiteScore
5.20
自引率
6.50%
发文量
48
审稿时长
>12 weeks
期刊介绍: The International Journal of Methods in Psychiatric Research (MPR) publishes high-standard original research of a technical, methodological, experimental and clinical nature, contributing to the theory, methodology, practice and evaluation of mental and behavioural disorders. The journal targets in particular detailed methodological and design papers from major national and international multicentre studies. There is a close working relationship with the US National Institute of Mental Health, the World Health Organisation (WHO) Diagnostic Instruments Committees, as well as several other European and international organisations. MPR aims to publish rapidly articles of highest methodological quality in such areas as epidemiology, biostatistics, generics, psychopharmacology, psychology and the neurosciences. Articles informing about innovative and critical methodological, statistical and clinical issues, including nosology, can be submitted as regular papers and brief reports. Reviews are only occasionally accepted. MPR seeks to monitor, discuss, influence and improve the standards of mental health and behavioral neuroscience research by providing a platform for rapid publication of outstanding contributions. As a quarterly journal MPR is a major source of information and ideas and is an important medium for students, clinicians and researchers in psychiatry, clinical psychology, epidemiology and the allied disciplines in the mental health field.
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