Prediction of Shunt Malfunction Using Automated Ventricular Volume Analysis and Radiomics.

IF 3.9 2区 医学 Q1 CLINICAL NEUROLOGY Neurosurgery Pub Date : 2024-11-26 DOI:10.1227/neu.0000000000003296
Ryan T Kellogg, Jan Vargas, Matthew Nguyen, Anthony Nwanko, Sohil Patel, Kanchan Ghimire, Xue Feng
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Abstract

Background and objectives: The assessment of ventricle size is crucial in diagnosing hydrocephalus and in detecting shunt malfunctions. Current methods primarily involve 2-dimensional measurements or ratios. We evaluated the accuracy of volumetric analysis and radiomics in diagnosing hydrocephalus and shunt malfunction.

Methods: We identified patients that underwent shunt surgery between January 2018 and August 2020 and collected head CTs from patients who were imaged before the placement of their shunt, with a functional shunt, or with a shunt malfunction. We performed automated ventricle segmentation on the computed tomography (CT) scans to compute ventricle volumes. For each patient, the ventricular volume was compared against a reference normative data set to determine if the ventricular volume was within a given range of SDs. Radiomics analyses were performed on the pathological and a normal data set, combined with clinical features, and used to train classifiers to identify patients with a malfunctioning shunt.

Results: A total of 145 head CTs from 66 patients were collected and segmented. Comparing pathological ventricular volumes to a normative data set yielded an accuracy of 70% to 73%, depending on the SD cutoff (area under the curve [AUC] of 0.772). When radiomics analysis was performed on 145 pathological and 73 normal scans, the best performing model was a support vector machine model that predicted malfunctioning shunt with an AUC of 0.92 and F1-score of 0.848. Furthermore, the support vector machine model was tested using a held-out testing data set that achieved an AUC of 0.933.

Conclusion: Automated ventricle segmentation using convolutional neural networks combined with radiomics analysis can be used with age and sex to assist in the diagnosis of hydrocephalus and shunt malfunctions when combined with a reference normative data set. It offers a time-efficient alternative to manual segmentation, reduces interobserver variability, and holds promise in improving patient outcomes by facilitating early and accurate diagnosis of hydrocephalus/shunt malfunction.

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利用自动心室容积分析和放射组学预测分流故障
背景和目的:评估脑室大小对于诊断脑积水和检测分流管故障至关重要。目前的方法主要涉及二维测量或比率。我们评估了容积分析和放射组学在诊断脑积水和分流管故障方面的准确性:我们确定了在 2018 年 1 月至 2020 年 8 月期间接受分流手术的患者,并收集了患者的头部 CT,这些患者在分流术前、分流术后或分流术后出现故障。我们对计算机断层扫描(CT)进行了自动脑室分割,以计算脑室体积。我们将每位患者的心室容积与参考标准数据集进行比较,以确定心室容积是否在给定的 SD 范围内。对病理数据集和正常数据集进行放射组学分析,结合临床特征,用于训练分类器,以识别分流失灵的患者:共收集并分割了66名患者的145张头部CT照片。将病理心室容积与标准数据集进行比较,准确率为70%至73%,具体取决于SD截止值(曲线下面积[AUC]为0.772)。当对 145 个病理扫描和 73 个正常扫描进行放射组学分析时,表现最好的模型是支持向量机模型,该模型预测分流功能失常的 AUC 为 0.92,F1-score 为 0.848:结论:使用卷积神经网络结合放射组学分析进行脑室自动分割,结合参考标准数据集,可与年龄和性别一起用于辅助诊断脑积水和分流管故障。它提供了一种替代人工分割的省时方法,减少了观察者之间的差异,并有望通过促进早期准确诊断脑积水/分流管故障来改善患者的预后。
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来源期刊
Neurosurgery
Neurosurgery 医学-临床神经学
CiteScore
8.20
自引率
6.20%
发文量
898
审稿时长
2-4 weeks
期刊介绍: Neurosurgery, the official journal of the Congress of Neurological Surgeons, publishes research on clinical and experimental neurosurgery covering the very latest developments in science, technology, and medicine. For professionals aware of the rapid pace of developments in the field, this journal is nothing short of indispensable as the most complete window on the contemporary field of neurosurgery. Neurosurgery is the fastest-growing journal in the field, with a worldwide reputation for reliable coverage delivered with a fresh and dynamic outlook.
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