Pahwa Bhavya, Tayal Anish, Shukla Anushruti, Soni Ujjwal, Gupta Namrata, Bassey Esther, Sharma Mayur
Department of Neurosurgery, University College of Medical Sciences and GTB Hospital, Delhi, India.
Department of Neurosurgery, KMC Manipal, Udupi, Karnataka, India.
World Neurosurg. 2023 Sep;177:e480-e492. doi: 10.1016/j.wneu.2023.06.080. Epub 2023 Jun 24.
In the past decade, many machine learning (ML) models have been used in the management of normal pressure hydrocephalus (NPH). This study aims at systematically reviewing those ML models.
The PubMed, Embase, and Web of Science databases were searched for studies reporting applications of ML in NPH. Quality assessment was performed using Prediction model Risk Of Bias ASsessment Tool (PROBAST) and Transparent Reporting of a multivariable predication model for Individual Prognosis Or Diagnosis (TRIPOD) adherence reporting guidelines, and statistical analysis was performed with the level of significance of <0.05.
A total of 22 studies with 53 models were included in the review, of which the convolutional neural network was the most used model. Inputs used to train various models included clinical features, computed tomography scan, magnetic resonance imaging, intracranial pulse waveform characteristics, and perfusion infusion. The overall mean accuracy of the models was 77% (highest for the convolutional neural network, 98%, while lowest for decision tree, 55%; P = 0.176). There was a statistically significant difference in the accuracy and area under the curve of diagnostic and interventional models (accuracy: 83.4% vs. 69.4%, area under the curve: 0.882 vs. 0.729; P < 0.001). Overall, 59.09% (n = 13) and 81.82% (n = 18) of the studies had high-risk bias and high-applicability, respectively, on PROBAST assessment; however, only 55.15% of the studies adhered to the TRIPOD statement.
Though highly accurate, there are many challenges to current ML models necessitating the need to standardize the ML models to enable comparison across the studies and enhance the NPH decision-making and care.
在过去十年中,许多机器学习(ML)模型已被用于正常压力脑积水(NPH)的管理。本研究旨在系统回顾这些ML模型。
在PubMed、Embase和Web of Science数据库中检索报告ML在NPH中应用的研究。使用预测模型偏倚风险评估工具(PROBAST)和个体预后或诊断多变量预测模型的透明报告(TRIPOD)依从性报告指南进行质量评估,并进行显著性水平<0.05的统计分析。
本综述共纳入22项研究中的53个模型,其中卷积神经网络是使用最多的模型。用于训练各种模型的输入包括临床特征、计算机断层扫描、磁共振成像、颅内脉搏波形特征和灌注输注。模型的总体平均准确率为77%(卷积神经网络最高,为98%,决策树最低,为55%;P = 0.176)。诊断模型和干预模型的准确率和曲线下面积存在统计学显著差异(准确率:83.4%对69.4%,曲线下面积:0.882对0.729;P < 0.001)。总体而言,在PROBAST评估中,分别有59.09%(n = 13)和81.82%(n = 18)的研究存在高风险偏倚和高适用性;然而,只有55.15%的研究遵循了TRIPOD声明。
尽管当前的ML模型高度准确,但仍存在许多挑战,需要对ML模型进行标准化,以便跨研究进行比较,并加强NPH的决策和护理。