Predictive value of the random forest model based on bioelectrical impedance analysis parameter trajectories for short-term prognosis in stroke patients.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Jiajia Yang, Jingjing Peng, Guangwei Liu, Feng Li
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Abstract

Background: The short-term prognosis of stroke patients is mainly influenced by the severity of the primary disease at admission and the trend of disease development during the acute phase (1-7 days after admission).

Objective: The aim of this study is to explore the relationship between the bioelectrical impedance analysis (BIA) parameter trajectories during the acute phase of stroke patients and their short-term prognosis, and to investigate the predictive value of the prediction model constructed using BIA parameter trajectories and clinical indicators at admission for short-term prognosis in stroke patients.

Methods: A total of 162 stroke patients were prospectively enrolled, and their clinical indicators at admission and BIA parameters during the first 1-7 days of admission were collected. A Group-Based Trajectory Model (GBTM) was employed to identify different subgroups of longitudinal trajectories of BIA parameters during the first 1-7 days of admission in stroke patients. The random forest algorithm was applied to screen BIA parameter trajectories and clinical indicators with predictive value, construct prediction models, and perform model comparisons. The outcome measure was the Modified Rankin Scale (mRS) score at discharge.

Results: PA in BIA parameters can be divided into four separate trajectory groups. The incidence of poor prognosis (mRS: 4-6) at discharge was significantly higher in the "Low PA Rapid Decline Group" (85.0%) than in the "High PA Stable Group " (33.3%) and in the "Medium PA Slow Decline Group "(29.5%) (all P < 0.05). In-hospital mortality was the highest in the "Low PA Rapid Decline Group" (60%) compared with the remaining trajectory groups (P < 0.05). Compared with the prediction model with only clinical indicators (Model 1), the prediction model with PA trajectories (Model 2) demonstrated higher predictive accuracy and efficacy. The area under the receiver operating characteristic curve (AUC) of Model 2 was 0.909 [95% CI 0.863, 0.956], integrated discrimination improvement index (IDI), 0.035 (P < 0.001), and net reclassification improvement (NRI), 0.175 (P = 0.031).

Conclusion: PA trajectories during the first 1-7 days of admission are associated with the short-term prognosis of stroke patients. PA trajectories have additional value in predicting the short-term prognosis of stroke patients.

基于生物电阻抗分析参数轨迹的随机森林模型对脑卒中患者短期预后的预测价值。
背景:卒中患者的短期预后主要受入院时原发疾病的严重程度和急性期(入院后 1-7 天)疾病发展的趋势影响:脑卒中患者的短期预后主要受入院时原发疾病的严重程度和急性期(入院后1-7天)疾病发展趋势的影响:本研究旨在探讨脑卒中患者急性期生物电阻抗分析(BIA)参数轨迹与其短期预后之间的关系,并研究利用入院时BIA参数轨迹和临床指标构建的预测模型对脑卒中患者短期预后的预测价值:方法:前瞻性入组 162 例脑卒中患者,收集他们入院时的临床指标和入院后 1-7 天内的 BIA 参数。采用基于组的轨迹模型(GBTM)来识别脑卒中患者入院后 1-7 天内 BIA 参数纵向轨迹的不同亚组。应用随机森林算法筛选具有预测价值的 BIA 参数轨迹和临床指标,构建预测模型并进行模型比较。结果以出院时的改良Rankin量表(mRS)评分为衡量标准:结果:BIA参数中的PA可分为四个不同的轨迹组。出院时预后不良(mRS:4-6)的发生率在 "低 PA 快速下降组"(85.0%)明显高于 "高 PA 稳定组"(33.3%)和 "中 PA 缓慢下降组"(29.5%)(均为 P):入院后 1-7 天内的 PA 轨迹与脑卒中患者的短期预后有关。PA 轨迹对预测脑卒中患者的短期预后具有额外价值。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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