Dashtkoohi Mohammad, Ghadimi Delaram J, Moodi Farzan, Behrang Nima, Khormali Ehsan, Salari Hanieh Mobarak, Cohen Nathan T, Gholipour Taha, Saligheh Rad Hamidreza
Quantitative MR Imaging and Spectroscopy Group (QMISG), Tehran University of Medical Sciences, Tehran, Iran; Interdisciplinary Neuroscience Research Program, Tehran University of Medical Sciences, Tehran, Iran.
School of Medicine, Shahid Beheshti University of Medical Sciences, Tehran, Iran.
Epilepsy Behav. 2025 Jun;167:110403. doi: 10.1016/j.yebeh.2025.110403. Epub 2025 Mar 29.
Focal cortical dysplasia (FCD) is a common cause of pharmacoresistant epilepsy. However, it can be challenging to detect FCD using MRI alone. This study aimed to review and analyze studies that used machine learning and artificial neural networks (ANN) methods as an additional tool to enhance MRI findings in FCD patients.
A systematic search was conducted in four databases (Embase, PubMed, Scopus, and Web of Science). The quality of the studies was assessed using QUADAS-AI, and a bivariate random-effects model was used for analysis. The main outcome analyzed was the sensitivity and specificity of patient-wise outcomes. Heterogeneity among studies was assessed using I.
A total of 41 studies met the inclusion criteria, including 24 ANN-based studies and 17 machine learning studies. Meta-analysis of internal validation datasets showed a pooled sensitivity of 0.81 and specificity of 0.92 for AI-based models in detecting FCD lesions. Meta-analysis of external validation datasets yielded a pooled sensitivity of 0.73 and specificity of 0.66. There was moderate heterogeneity among studies in the external validation dataset, but no significant publication bias was found.
Although there is an increasing number of machine learning and ANN-based models for FCD detection, their clinical applicability remains limited. Further refinement and optimization, along with longitudinal studies, are needed to ensure their integration into clinical practice. Addressing the identified limitations and intensifying research efforts will improve their relevance and reliability in real medical scenarios.
局灶性皮质发育不良(FCD)是药物难治性癫痫的常见病因。然而,仅使用磁共振成像(MRI)检测FCD可能具有挑战性。本研究旨在回顾和分析使用机器学习和人工神经网络(ANN)方法作为辅助工具以增强FCD患者MRI检查结果的研究。
在四个数据库(Embase、PubMed、Scopus和Web of Science)中进行了系统检索。使用QUADAS-AI评估研究质量,并采用双变量随机效应模型进行分析。分析的主要结果是患者层面结果的敏感性和特异性。使用I统计量评估研究之间的异质性。
共有41项研究符合纳入标准,包括24项基于ANN的研究和17项机器学习研究。对内部验证数据集的荟萃分析显示,基于人工智能的模型检测FCD病变的合并敏感性为0.81,特异性为0.92。对外部验证数据集的荟萃分析得出合并敏感性为0.73,特异性为0.66。外部验证数据集中的研究存在中度异质性,但未发现明显的发表偏倚。
尽管用于FCD检测的基于机器学习和ANN的模型数量不断增加,但其临床适用性仍然有限。需要进一步完善和优化,并开展纵向研究,以确保其融入临床实践。解决已发现的局限性并加强研究工作将提高它们在实际医疗场景中的相关性和可靠性。