MRI-Based Prediction of Clinical Improvement after Ventricular Shunt Placement for Normal Pressure Hydrocephalus: Development and Evaluation of an Integrated Multisequence Machine Learning Algorithm.

Owen P Leary, Zhusi Zhong, Lulu Bi, Zhicheng Jiao, Yu-Wei Dai, Kevin Ma, Shanzeh Sayied, Daniel Kargilis, Maliha Imami, Lin-Mei Zhao, Xue Feng, Gerald Riccardello, Scott Collins, Konstantina Svokos, Abhay Moghekar, Li Yang, Harrison Bai, Petra M Klinge, Jerrold L Boxerman
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Abstract

Background and purpose: Symptoms of normal pressure hydrocephalus (NPH) are sometimes refractory to shunt placement, with limited ability to predict improvement for individual patients. We evaluated an MRI-based artificial intelligence method to predict postshunt NPH symptom improvement.

Materials and methods: Patients with NPH who underwent MRI before shunt placement at a single center (2014-2021) were identified. Twelve-month postshunt improvement in mRS, incontinence, gait, and cognition were retrospectively abstracted from clinical documentation. 3D deep residual neural networks were built on skull-stripped T2-weighted and FLAIR images. Predictions based on both sequences were fused by additional network layers. Patients from 2014-2019 were used for parameter optimization, while those from 2020-2021 were used for testing. Models were validated on an external validation data set from a second institution (n = 33).

Results: Of 249 patients, n = 201 and n = 185 were included in the T2-based and FLAIR-based models according to imaging availability. The combination of T2-weighted and FLAIR sequences offered the best performance in mRS and gait improvement predictions relative to models trained on imaging acquired by using only 1 sequence, with area under the receiver operating characteristic (AUROC) values of 0.7395 [0.5765-0.9024] for mRS and 0.8816 [0.8030-0.9602] for gait. For urinary incontinence and cognition, combined model performances on predicting outcomes were similar to FLAIR-only performance, with AUROC values of 0.7874 [0.6845-0.8903] and 0.7230 [0.5600-0.8859].

Conclusions: Application of a combined algorithm by using both T2-weighted and FLAIR sequences offered the best image-based prediction of postshunt symptom improvement, particularly for gait and overall function in terms of mRS.

基于磁共振成像的正常压力脑积水(NPH)脑室分流术后临床改善预测:综合多序列机器学习算法的开发与评估》。
背景和目的:正常压力脑积水(NPH)的症状有时会对分流置管产生难治性,而预测个别患者症状改善的能力有限。我们评估了一种基于磁共振成像的人工智能方法,用于预测分流术后 NPH 症状的改善情况:确定了在一个中心(2014-2021 年)接受分流术前磁共振成像(MRI)检查的 NPH 患者。从临床文件中回顾性地抽取了分流术后12个月在改良Rankin量表(mRS)、大小便失禁、步态和认知方面的改善情况。在头骨剥离 T2 加权和液体衰减反转恢复(FLAIR)图像上建立了三维深度残差神经网络。基于这两种序列的预测通过附加网络层进行融合。2014-2019 年的患者用于参数优化,2020-2021 年的患者用于测试。模型在来自第二家机构的外部验证数据集(n=33)上进行了验证:在249名患者中,根据成像可用性,分别有n=201和n=185名患者被纳入基于T2和基于FLAIR的模型。T2加权序列和FLAIR序列的组合在mRS和步态改善预测方面提供了相对于仅使用一种序列获得的成像所训练的模型的最佳性能,mRS的AUROC值为0.7395 [0.5765-0.9024],步态的AUROC值为0.8816 [0.8030-0.9602]。对于尿失禁和认知能力,联合模型在预测结果方面的表现与纯FLAIR表现相似,AUROC值分别为0.7874 [0.6845-0.8903]和0.7230 [0.5600-0.8859]:结论:使用T2加权和FLAIR序列的联合算法可提供分流术后症状改善的最佳图像预测,尤其是步态和mRS方面的整体功能:缩写: NPH = 正常压力脑积水;iNPH = 特发性 NPH;sNPH = 继发性 NPH;AI = 人工智能;ML = 机器学习;CSF = 脑脊液;AUROC = 接收者操作特征下面积;FLAIR = 液体衰减反转恢复;BMI = 体质指数;CCI = Charlson 合并症指数;SD = 标准差;IQR = 四分位数范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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