Author:
Shim Ka Young,Chung Sung Won,Jeong Jae Hak,Hwang Inpyeong,Park Chul-Kee,Kim Tae Min,Park Sung-Hye,Won Jae Kyung,Lee Joo Ho,Lee Soon-Tae,Yoo Roh-Eul,Kang Koung Mi,Yun Tae Jin,Kim Ji-Hoon,Sohn Chul-Ho,Choi Kyu Sung,Choi Seung Hong
Abstract
AbstractGlioblastoma remains the most devastating brain tumor despite optimal treatment, because of the high rate of recurrence. Distant recurrence has distinct genomic alterations compared to local recurrence, which requires different treatment planning both in clinical practice and trials. To date, perfusion-weighted MRI has revealed that perfusional characteristics of tumor are associated with prognosis. However, not much research has focused on recurrence patterns in glioblastoma: namely, local and distant recurrence. Here, we propose two different neural network models to predict the recurrence patterns in glioblastoma that utilizes high-dimensional radiomic profiles based on perfusion MRI: area under the curve (AUC) (95% confidence interval), 0.969 (0.903–1.000) for local recurrence; 0.864 (0.726–0.976) for distant recurrence for each patient in the validation set. This creates an opportunity to provide personalized medicine in contrast to studies investigating only group differences. Moreover, interpretable deep learning identified that salient radiomic features for each recurrence pattern are related to perfusional intratumoral heterogeneity. We also demonstrated that the combined salient radiomic features, or “radiomic risk score”, increased risk of recurrence/progression (hazard ratio, 1.61; p = 0.03) in multivariate Cox regression on progression-free survival.
Funder
National Research Foundation of Korea
Publisher
Springer Science and Business Media LLC
Cited by
26 articles.
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