A machine learning approach to determine the risk factors for fall in multiple sclerosis.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS BMC Medical Informatics and Decision Making Pub Date : 2024-07-30 DOI:10.1186/s12911-024-02621-0
Su Özgür, Meryem Koçaslan Toran, İsmail Toygar, Gizem Yağmur Yalçın, Mefkure Eraksoy
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Abstract

Background: Falls in multiple sclerosis can result in numerous problems, including injuries and functional loss. Therefore, determining the factors contributing to falls in people with Multiple Sclerosis (PwMS) is crucial. This study aims to investigate the contributing factors to falls in multiple sclerosis using a machine learning approach.

Methods: This cross-sectional study was conducted with 253 PwMS admitted to the outpatient clinic of a university hospital between February and August 2023. A sociodemographic data collection form, Fall Efficacy Scale (FES-I), Berg Balance Scale (BBS), Fatigue Severity Scale (FSS), Expanded Disability Status Scale (EDSS), Multiple Sclerosis Impact Scale (MSIS-29), and Timed 25 Foot Walk Test (T25-FW) were used for data collection. Gradient-boosting algorithms were employed to predict the important variables for falls in PwMS. The XGBoost algorithm emerged as the best performed model in this study.

Results: Most of the participants (70.0%) were female, with a mean age of 40.44 ± 10.88 years. Among the participants, 40.7% reported a fall history in the last year. The area under the curve value of the model was 0.713. Risk factors of falls in PwMS included MSIS-29 (0.424), EDSS (0.406), marital status (0.297), education level (0.240), disease duration (0.185), age (0.130), family type (0.119), smoking (0.031), income level (0.031), and regular exercise habit (0.026).

Conclusions: In this study, smoking and regular exercise were the modifiable factors contributing to falls in PwMS. We recommend that clinicians facilitate the modification of these factors in PwMS. Age and disease duration were non-modifiable factors. These should be considered as risk increasing factors and used to identify PwMS at risk. Interventions aimed at reducing MSIS-29 and EDSS scores will help to prevent falls in PwMS. Education of individuals to increase knowledge and awareness is recommended. Financial support policies for those with low income will help to reduce the risk of falls.

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确定多发性硬化症患者跌倒风险因素的机器学习方法。
背景:多发性硬化症患者跌倒会导致许多问题,包括受伤和功能丧失。因此,确定导致多发性硬化症患者跌倒的因素至关重要。本研究旨在利用机器学习方法调查多发性硬化症患者跌倒的诱因:这项横断面研究的对象是 2023 年 2 月至 8 月期间在一所大学医院门诊就诊的 253 名多发性硬化症患者。数据收集采用了社会人口学数据收集表、跌倒功效量表(FES-I)、伯格平衡量表(BBS)、疲劳严重程度量表(FSS)、残疾状况扩展量表(EDSS)、多发性硬化影响量表(MSIS-29)和25英尺定时步行测试(T25-FW)。采用梯度提升算法来预测导致 PwMS 跌倒的重要变量。结果显示,XGBoost 算法是本研究中表现最好的模型:大多数参与者(70.0%)为女性,平均年龄为(40.44 ± 10.88)岁。其中,40.7%的参与者在过去一年中有跌倒史。模型的曲线下面积值为 0.713。跌倒的风险因素包括:MSIS-29 (0.424)、EDSS (0.406)、婚姻状况 (0.297)、教育程度 (0.240)、病程 (0.185)、年龄 (0.130)、家庭类型 (0.119)、吸烟 (0.031)、收入水平 (0.031) 和经常锻炼的习惯 (0.026):在这项研究中,吸烟和经常锻炼是导致老年人跌倒的可改变因素。结论:在这项研究中,吸烟和经常锻炼是导致老年人跌倒的可改变因素,我们建议临床医生帮助老年人改变这些因素。年龄和病程是不可改变的因素。这些因素应被视为增加风险的因素,并用于识别有风险的 PwMS。旨在降低 MSIS-29 和 EDSS 分数的干预措施将有助于预防老年人跌倒。建议对个人进行教育,以增加知识和提高意识。针对低收入人群的经济支持政策将有助于降低跌倒风险。
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
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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