Thom Daniel, Chang Richard Shek-Kwan, Lannin Natasha A, Ademi Zanfina, Ge Zongyuan, Reutens David, O'Brien Terence, D'Souza Wendyl, Perucca Piero, Reeder Sandra, Nikpour Armin, Wong Chong, Kiley Michelle, Saw Jacqui-Lyn, Nicolo John-Paul, Seneviratne Udaya, Carney Patrick, Jones Dean, Somerville Ernest, Stapleton Clare, Foster Emma, Vadlamudi Lata, Vaughan David N, Lee James, Farrar Tania, Howard Mark, Sparrow Robert, Chen Zhibin, Kwan Patrick
Department of Neuroscience, School of Translational Medicine, Monash University, Melbourne, Victoria, Australia.
Department of Neurology, Alfred Hospital, Melbourne, Victoria, Australia.
BMJ Open. 2025 Apr 5;15(4):e086607. doi: 10.1136/bmjopen-2024-086607.
Selection of antiseizure medications (ASMs) for newly diagnosed epilepsy remains largely a trial-and-error process. We have developed a machine learning (ML) model using retrospective data collected from five international cohorts that predicts response to different ASMs as the initial treatment for individual adults with new-onset epilepsy. This study aims to prospectively evaluate this model in Australia using a randomised controlled trial design.
At least 234 adult patients with newly diagnosed epilepsy will be recruited from 14 centres in Australia. Patients will be randomised 1:1 to the ML group or usual care group. The ML group will receive the ASM recommended by the model unless it is considered contraindicated by the neurologist. The usual care group will receive the ASM selected by the neurologist alone. Both the patient and neurologists conducting the follow-up will be blinded to the group assignment. Both groups will be followed up for 52 weeks to assess treatment outcomes. Additional information on adverse events, quality of life, mood and use of healthcare services and productivity will be collected using validated questionnaires. Acceptability of the model will also be assessed.The primary outcome will be the proportion of participants who achieve seizure-freedom (defined as no seizures during the 12-month follow-up period) while taking the initially prescribed ASM. Secondary outcomes include time to treatment failure, time to first seizure after randomisation, changes in mood assessment score and quality of life score, direct healthcare costs, and loss of productivity during the treatment period.This trial will provide class I evidence for the effectiveness of a ML model as a decision support tool for neurologists to select the first ASM for adults with newly diagnosed epilepsy.
This study is approved by the Alfred Health Human Research Ethics Committee (Project 130/23). Findings will be presented in academic conferences and submitted to peer-reviewed journals for publication.
ACTRN12623000209695.
对于新诊断出癫痫的患者,选择抗癫痫药物(ASM)在很大程度上仍是一个反复试验的过程。我们利用从五个国际队列收集的回顾性数据开发了一种机器学习(ML)模型,该模型可预测个体成年新发癫痫患者对不同ASM作为初始治疗的反应。本研究旨在采用随机对照试验设计在澳大利亚对该模型进行前瞻性评估。
将从澳大利亚的14个中心招募至少234名新诊断出癫痫的成年患者。患者将按1:1随机分配至ML组或常规治疗组。ML组将接受模型推荐的ASM,除非神经科医生认为该药物有禁忌。常规治疗组将仅接受神经科医生选择的ASM。进行随访的患者和神经科医生都将对分组情况不知情。两组都将随访52周以评估治疗结果。将使用经过验证的问卷收集有关不良事件、生活质量、情绪以及医疗服务使用和生产力的其他信息。还将评估模型的可接受性。主要结局将是在服用最初开具的ASM期间实现无癫痫发作(定义为在12个月随访期内无癫痫发作)的参与者比例。次要结局包括治疗失败时间、随机分组后首次癫痫发作时间、情绪评估得分和生活质量得分的变化、直接医疗费用以及治疗期间的生产力损失。本试验将为ML模型作为神经科医生为新诊断出癫痫的成年患者选择首个ASM的决策支持工具的有效性提供I级证据。
本研究已获得阿尔弗雷德健康人类研究伦理委员会批准(项目130/23)。研究结果将在学术会议上展示,并提交给同行评审期刊发表。
ACTRN12623000209695。