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通过机器学习潜在类别分析对非可电击心律的院外心脏骤停患者进行聚类。

Clustering out-of-hospital cardiac arrest patients with non-shockable rhythm by machine learning latent class analysis.

作者信息

Okada Yohei, Komukai Sho, Kitamura Tetsuhisa, Kiguchi Takeyuki, Irisawa Taro, Yamada Tomoki, Yoshiya Kazuhisa, Park Changhwi, Nishimura Tetsuro, Ishibe Takuya, Yagi Yoshiki, Kishimoto Masafumi, Inoue Toshiya, Hayashi Yasuyuki, Sogabe Taku, Morooka Takaya, Sakamoto Haruko, Suzuki Keitaro, Nakamura Fumiko, Matsuyama Tasuku, Nishioka Norihiro, Kobayashi Daisuke, Matsui Satoshi, Hirayama Atsushi, Yoshimura Satoshi, Kimata Shunsuke, Shimazu Takeshi, Ohtsuru Shigeru, Iwami Taku

机构信息

Department of Preventive Services, School of Public Health Kyoto University Kyoto Japan.

Department of Primary Care and Emergency Medicine, Graduate School of Medicine Kyoto University Kyoto Japan.

出版信息

Acute Med Surg. 2022 May 27;9(1):e760. doi: 10.1002/ams2.760. eCollection 2022 Jan-Dec.

Abstract

AIM

We aimed to identify subphenotypes among patients with out-of-hospital cardiac arrest (OHCA) with initial non-shockable rhythm by applying machine learning latent class analysis and examining the associations between subphenotypes and neurological outcomes.

METHODS

This study was a retrospective analysis within a multi-institutional prospective observational cohort study of OHCA patients in Osaka, Japan (the CRITICAL study). The data of adult OHCA patients with medical causes and initial non-shockable rhythm presenting with OHCA between 2012 and 2016 were included in machine learning latent class analysis models, which identified subphenotypes, and patients who presented in 2017 were included in a dataset validating the subphenotypes. We investigated associations between subphenotypes and 30-day neurological outcomes.

RESULTS

Among the 12,594 patients in the CRITICAL study database, 4,849 were included in the dataset used to classify subphenotypes (median age: 75 years, 60.2% male), and 1,465 were included in the validation dataset (median age: 76 years, 59.0% male). Latent class analysis identified four subphenotypes. Odds ratios and 95% confidence intervals for a favorable 30-day neurological outcome among patients with these subphenotypes, using group 4 for comparison, were as follows; group 1, 0.01 (0.001-0.046); group 2, 0.097 (0.051-0.171); and group 3, 0.175 (0.073-0.358). Associations between subphenotypes and 30-day neurological outcomes were validated using the validation dataset.

CONCLUSION

We identified four subphenotypes of OHCA patients with initial non-shockable rhythm. These patient subgroups presented with different characteristics associated with 30-day survival and neurological outcomes.

摘要

目的

我们旨在通过应用机器学习潜在类别分析并研究亚表型与神经学结局之间的关联,来识别院外心脏骤停(OHCA)且初始心律不可电击复律患者中的亚表型。

方法

本研究是在日本大阪对OHCA患者进行的多机构前瞻性观察队列研究中的一项回顾性分析(CRITICAL研究)。2012年至2016年间因医疗原因导致OHCA且初始心律不可电击复律的成年OHCA患者数据被纳入机器学习潜在类别分析模型以识别亚表型,2017年就诊的患者被纳入用于验证亚表型的数据集。我们调查了亚表型与30天神经学结局之间的关联。

结果

在CRITICAL研究数据库的12594例患者中,4849例被纳入用于分类亚表型的数据集(中位年龄:75岁,男性占60.2%),1465例被纳入验证数据集(中位年龄:76岁,男性占59.0%)。潜在类别分析识别出四种亚表型。以第4组为对照,这些亚表型患者30天神经学结局良好的比值比及95%置信区间如下:第1组,0.01(0.001 - 0.046);第2组,0.097(0.051 - 0.171);第3组,0.175(0.073 - 0.358)。使用验证数据集验证了亚表型与30天神经学结局之间的关联。

结论

我们识别出了初始心律不可电击复律的OHCA患者的四种亚表型。这些患者亚组具有与30天生存率和神经学结局相关的不同特征。

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