Deep neural network for multiparametric ultrasound imaging of prostate cancer

Author(s):  
Derek Y. Chan ◽  
D. Cody Morris ◽  
Theresa Lye ◽  
Thomas J. Polascik ◽  
Mark L. Palmeri ◽  
...  
2020 ◽  
Vol 30 (12) ◽  
pp. 6582-6592
Author(s):  
Muhammad Arif ◽  
Ivo G. Schoots ◽  
Jose Castillo Tovar ◽  
Chris H. Bangma ◽  
Gabriel P. Krestin ◽  
...  

Abstract Objectives To develop an automatic method for identification and segmentation of clinically significant prostate cancer in low-risk patients and to evaluate the performance in a routine clinical setting. Methods A consecutive cohort (n = 292) from a prospective database of low-risk patients eligible for the active surveillance was selected. A 3-T multi-parametric MRI at 3 months after inclusion was performed. Histopathology from biopsies was used as reference standard. MRI positivity was defined as PI-RADS score ≥ 3, histopathology positivity was defined as ISUP grade ≥ 2. The selected cohort contained four patient groups: (1) MRI-positive targeted biopsy-positive (n = 116), (2) MRI-negative systematic biopsy-negative (n = 55), (3) MRI-positive targeted biopsy-negative (n = 113), (4) MRI-negative systematic biopsy-positive (n = 8). Group 1 was further divided into three sets and a 3D convolutional neural network was trained using different combinations of these sets. Two MRI sequences (T2w, b = 800 DWI) and the ADC map were used as separate input channels for the model. After training, the model was evaluated on the remaining group 1 patients together with the patients of groups 2 and 3 to identify and segment clinically significant prostate cancer. Results The average sensitivity achieved was 82–92% at an average specificity of 43–76% with an area under the curve (AUC) of 0.65 to 0.89 for different lesion volumes ranging from > 0.03 to > 0.5 cc. Conclusions The proposed deep learning computer-aided method yields promising results in identification and segmentation of clinically significant prostate cancer and in confirming low-risk cancer (ISUP grade ≤ 1) in patients on active surveillance. Key Points • Clinically significant prostate cancer identification and segmentation on multi-parametric MRI is feasible in low-risk patients using a deep neural network. • The deep neural network for significant prostate cancer localization performs better for lesions with larger volumes sizes (> 0.5 cc) as compared to small lesions (> 0.03 cc). • For the evaluation of automatic prostate cancer segmentation methods in the active surveillance cohort, the large discordance group (MRI positive, targeted biopsy negative) should be included.


Author(s):  
L. Duran-Lopez ◽  
Juan P. Dominguez-Morales ◽  
D. Gutierrez-Galan ◽  
A. Rios-Navarro ◽  
A. Jimenez-Fernandez ◽  
...  

2018 ◽  
Vol 37 (5) ◽  
pp. 1127-1139 ◽  
Author(s):  
Zhiwei Wang ◽  
Chaoyue Liu ◽  
Danpeng Cheng ◽  
Liang Wang ◽  
Xin Yang ◽  
...  

2021 ◽  
Author(s):  
Ali Sadeghi ◽  
Iason Apostolakis ◽  
Can Meral ◽  
Francois Vignon ◽  
Jun Seob Shin ◽  
...  

2021 ◽  
Author(s):  
Zezhong Ye ◽  
Qingsong Yang ◽  
Joshua Lin ◽  
Peng Sun ◽  
Chengwei Shao ◽  
...  

AbstractStructural and cellular complexity of prostatic histopathology limits the accuracy of noninvasive detection and grading of prostate cancer (PCa). We addressed this limitation by employing a novel diffusion basis spectrum imaging (DBSI) to derive structurally-specific diffusion fingerprints reflecting various underlying prostatic structural and cellular components. We further developed diffusion histology imaging (DHI) by combining DBSI-derived structural fingerprints with a deep neural network (DNN) algorithm to more accurately classify different histopathological features and predict tumor grade in PCa. We examined 243 patients suspected with PCa using in vivo DBSI. The in vivo DBSI-derived diffusion metrics detected coexisting prostatic pathologies distinguishing inflammation, PCa, and benign prostatic hyperplasia. DHI distinguished PCa from benign peripheral and transition zone tissues with over 95% sensitivity and specificity. DHI also demonstrated over 90% sensitivity and specificity for Gleason score noninvasively. We present DHI as a novel diagnostic tool capable of noninvasive detection and grading of PCa.One sentence summaryDiffusion histology imaging noninvasively and accurately detects and grades prostate cancer.


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