Multiparametric MRI Tumor Probability Model for the Detection of Locally Recurrent Prostate Cancer After Radiation Therapy: Pathologic Validation and Comparison With Manual Tumor Delineations
Fernandes, Catarina Dinis; Simoes, Rita; Ghobadi, Ghazaleh; Heijmink, Stijn W. T. P. J.; Schoots, Ivo G.; de Jong, Jeroen; Walraven, Iris; van der Poel, Henk G.; van Houdt, Petra J.; Smolic, Milena; Pos, Floris J.; van der Heide, Uulke A.
(2019) International Journal of Radiation Oncology Biology Physics, volume 105, issue 1, pp. 140 - 148
(Article)
Abstract
Purpose: Focal salvage treatments of recurrent prostate cancer (PCa) after radiation therapy require accurate delineation of the target volume. Magnetic resonance imaging (MRI) is used for this purpose; however, radiation therapy–induced changes complicate image interpretation, and guidelines are lacking on the assessment and delineation of recurrent PCa. A tumor probability
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(TP) model was trained and independently tested using multiparametric magnetic resonance imaging (mp-MRI) of patients with radio-recurrent PCa. The resulting probability maps were used to derive target regions for radiation therapy treatment planning. Methods and Materials: Two cohorts of patients with radio-recurrent PCa were used in this study. All patients underwent mp-MRI (T2 weighted, diffusion-weighted imaging, and dynamic contrast enhanced). A logistic regression model was trained using imaging features from 21 patients with biopsy-proven recurrence who qualified for salvage treatment. The test cohort consisted of 17 patients treated with salvage prostatectomy. The model was tested against histopathology-derived tumor delineations. The voxel-wise TP maps were clustered using k-means to generate a gross tumor volume (GTV) contour for voxel-level comparisons with manual tumor delineations performed by 2 radiologists and with histopathology-validated contours. Later, k-means was used with 3 clusters to define a clinical target volume (CTV), high-risk CTV, and GTV, with increasing tumor risk. Results: In the test cohort, the model obtained a median (range) area under the curve of 0.77 (0.41-0.99) for the whole prostate. The GTV delineation resulted in a median sensitivity of 0.31 (0-0.87) and specificity of 0.97 (0.84-1.0) with no significant differences between model and manual delineations. The 3-level clustering GTV and high-risk CTV delineations had median sensitivities of 0.17 (0-0.59) and 0.49 (0-0.97) and specificities of 0.98 (0.84-1.00) and 0.94 (0.84-0.99), respectively. Conclusions: The TP model had a good performance in predicting voxel-wise presence of recurrent tumor. Model-derived tumor risk levels achieved sensitivity and specificity similar to manual delineations in localizing recurrent tumor. Voxel-wise TP derived from mp-MRI can in this way be incorporated for target definition in focal salvage of radio-recurrent PCa.
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Keywords: Area Under Curve, Cohort Studies, Humans, Logistic Models, Male, Models, Statistical, Multiparametric Magnetic Resonance Imaging, Neoplasm Recurrence, Local/diagnostic imaging, Prostatic Neoplasms/diagnostic imaging, Radiotherapy Planning, Computer-Assisted, Retrospective Studies, Salvage Therapy, Sensitivity and Specificity, Tumor Burden, Comparative Study, Journal Article, Research Support, Non-U.S. Gov't, Validation Studies
ISSN: 0360-3016
Publisher: Elsevier Inc.
Note: Funding Information: This study was supported by the Dutch Cancer Society (grant number NKI 2013-5937 and 10088 ). Funding Information: This study was supported by the Dutch Cancer Society (grant number NKI 2013-5937 and 10088). Publisher Copyright: © 2019 Elsevier Inc.
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