RT Journal Article SR Electronic T1 MRI-Based Prediction of Clinical Improvement after Ventricular Shunt Placement for Normal Pressure Hydrocephalus: Development and Evaluation of an Integrated Multisequence Machine Learning Algorithm JF American Journal of Neuroradiology JO Am. J. Neuroradiol. FD American Society of Neuroradiology DO 10.3174/ajnr.A8372 A1 Leary, Owen P. A1 Zhong, Zhusi A1 Bi, Lulu A1 Jiao, Zhicheng A1 Dai, Yu-Wei A1 Ma, Kevin A1 Sayied, Shanzeh A1 Kargilis, Daniel A1 Imami, Maliha A1 Zhao, Lin-Mei A1 Feng, Xue A1 Riccardello, Gerald A1 Collins, Scott A1 Svokos, Konstantina A1 Moghekar, Abhay A1 Yang, Li A1 Bai, Harrison A1 Klinge, Petra M. A1 Boxerman, Jerrold L. YR 2024 UL http://www.ajnr.org/content/early/2024/09/12/ajnr.A8372.abstract AB 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.AIartificial intelligenceAUROCarea under the receiver operating characteristic curveCCICharlson Comorbidity IndexDESHdisproportionately enlarged subarachnoid space hydrocephalusiNPHidiopathic normal pressure hydrocephalusIQRinterquartile rangeMLmachine learningNPHnormal pressure hydrocephalussNPHsecondary normal pressure hydrocephalus