在印度使用机器学习和传统方法的创伤性脑损伤患者预后模型的开发、验证和临床应用:一项研究方案。

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引用次数: 0

摘要

外伤性脑损伤(TBI)在印度仍然是一个主要的公共卫生问题,具有高死亡率和长期残疾。现有的预测模型大多是在高收入国家使用传统方法开发的,缺乏对印度环境的通用性,也没有利用机器学习或多中心数据的潜力。本研究主要旨在开发、比较和验证机器学习方法,包括传统方法,以预测中度或重度TBI患者的30天死亡率和6个月功能结果。第二个目标是描述和比较三级医疗机构TBI患者的入院特征和结果(出院时,3个月,6个月和1年)。方法和分析:来自新德里全印度医学科学研究所(AIIMS)神经外科Jai Prakash Narayan顶点创伤中心神经创伤登记处的数据,包括2022年3月23日至2024年9月22日期间入院的患者,将用于模型开发和内部验证。为了进行外部验证,将纳入来自同一中心(2010年5月至2013年8月)的回顾性收集数据,以及来自巴特那AIIMS(2022年6月1日至2024年11月30日)和金奈马德拉斯医学院拉吉夫甘地政府总医院(2022年5月1日至2024年10月31日)的前瞻性收集数据。将使用机器学习和传统统计技术开发30天死亡率和6个月功能结果的预测模型。模型性能将基于鉴别、校准和临床效用进行评估,后者通过决策曲线分析(DCA)进行评估。将根据最佳表现模型开发在线风险计算器,以估计结果概率和95% ci。伦理和传播:各自数据收集中心的机构伦理审查委员会,即新德里AIIMS、巴特那AIIMS和钦奈MMC,批准了这项研究。研究结果将发表在同行评议的期刊上,并在国家和国际会议上传播。讨论:本研究将开发和验证使用传统和机器学习方法为印度TBI量身定制的预后模型。多中心、前瞻性收集的数据将增强通用性,而临床效用将通过DCA进行评估。坚持透明报告个人预后或诊断多变量预测模型+人工智能(TRIPOD+AI)指南,确保方法的透明度。通过外部验证,这些模型可以改善临床决策、资源规划和不同印度医疗保健设置的患者-家庭沟通。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development, validation and clinical utility of prognostic models for patients with traumatic brain injury in an Indian setting using machine learning and traditional approaches: a study protocol.

Introduction: Traumatic brain injury (TBI) remains a major public health concern in India, with high mortality and long-term disability. Existing prognostic models, mostly developed in high-income countries using traditional methods, lack generalisability to the Indian context and do not use the potential of machine learning or multicentric data. This study primarily aims to develop, compare and validate machine learning methods, including the traditional approach, to predict 30-day mortality and 6-month functional outcomes in patients with moderate or severe TBI. A secondary objective is to describe and compare admission characteristics and outcomes (at discharge, 3 months, 6 months and 1 year) in TBI patients in tertiary care settings using descriptive analyses.

Methods and analysis: Data from the neurotrauma registry at Jai Prakash Narayan Apex Trauma Centre, department of neurosurgery, All India Institute of Medical Sciences (AIIMS), New Delhi, including patients admitted between 23 March 2022 and 22 September 2024, will be used for model development and internal validation. For external validation, retrospectively collected data from the same centre (May 2010 to August 2013) and prospectively collected data from AIIMS Patna (1 June 2022 to 30 November 2024) and Rajiv Gandhi Government General Hospital, Madras Medical College (MMC), Chennai (1 May 2022 to 31 October 2024) will be included. Prediction models for 30-day mortality and 6-month functional outcomes will be developed using both machine learning and traditional statistical techniques. Model performance will be evaluated based on discrimination, calibration and clinical utility, with the latter assessed through decision curve analysis (DCA). An online risk calculator will be developed based on the best-performing model to estimate outcome probabilities along with 95% CIs.

Ethics and dissemination: The institutional Ethics Review Board of respective data collection centres, that is, AIIMS, New Delhi, AIIMS, Patna, and MMC, Chennai, approved the study. Findings will be published in peer-reviewed journals and disseminated at national and international conferences.

Discussion: This study will develop and validate prognostic models using traditional and machine learning methods tailored to the Indian TBI context. Multicentric, prospectively collected data will enhance generalisability, while clinical utility will be evaluated through DCA. Adherence to Transparent Reporting of a multivariable prediction model for Individual Prognosis or Diagnosis + Artificial Intelligence (TRIPOD+AI) guidelines ensures methodological transparency. With external validation, these models may improve clinical decision-making, resource planning and patient-family communication in diverse Indian healthcare settings.

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来源期刊
BMJ Open
BMJ Open MEDICINE, GENERAL & INTERNAL-
CiteScore
4.40
自引率
3.40%
发文量
4510
审稿时长
2-3 weeks
期刊介绍: BMJ Open is an online, open access journal, dedicated to publishing medical research from all disciplines and therapeutic areas. The journal publishes all research study types, from study protocols to phase I trials to meta-analyses, including small or specialist studies. Publishing procedures are built around fully open peer review and continuous publication, publishing research online as soon as the article is ready.
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