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Evaluation of a Cascaded Deep Learning-based Algorithm for Prostate Lesion Detection at Biparametric MRI.
Lin, Yue; Yilmaz, Enis C; Belue, Mason J; Harmon, Stephanie A; Tetreault, Jesse; Phelps, Tim E; Merriman, Katie M; Hazen, Lindsey; Garcia, Charisse; Yang, Dong; Xu, Ziyue; Lay, Nathan S; Toubaji, Antoun; Merino, Maria J; Xu, Daguang; Law, Yan Mee; Gurram, Sandeep; Wood, Bradford J; Choyke, Peter L; Pinto, Peter A; Turkbey, Baris.
Afiliación
  • Lin Y; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Yilmaz EC; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Belue MJ; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Harmon SA; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Tetreault J; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Phelps TE; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Merriman KM; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Hazen L; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Garcia C; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Yang D; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Xu Z; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Lay NS; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Toubaji A; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Merino MJ; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Xu D; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Law YM; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Gurram S; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Wood BJ; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Choyke PL; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Pinto PA; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
  • Turkbey B; From the Molecular Imaging Branch (Y.L., E.C.Y., M.J.B., S.A.H., T.E.P., K.M.M., N.S.L., P.L.C., B.T.), Center for Interventional Oncology (L.H., C.G., B.J.W.), Laboratory of Pathology (A.T., M.J.M.), and Urologic Oncology Branch (S.G., P.A.P.), National Cancer Institute, National Institutes of Heal
Radiology ; 311(2): e230750, 2024 May.
Article en En | MEDLINE | ID: mdl-38713024
ABSTRACT
Background Multiparametric MRI (mpMRI) improves prostate cancer (PCa) detection compared with systematic biopsy, but its interpretation is prone to interreader variation, which results in performance inconsistency. Artificial intelligence (AI) models can assist in mpMRI interpretation, but large training data sets and extensive model testing are required. Purpose To evaluate a biparametric MRI AI algorithm for intraprostatic lesion detection and segmentation and to compare its performance with radiologist readings and biopsy results. Materials and Methods This secondary analysis of a prospective registry included consecutive patients with suspected or known PCa who underwent mpMRI, US-guided systematic biopsy, or combined systematic and MRI/US fusion-guided biopsy between April 2019 and September 2022. All lesions were prospectively evaluated using Prostate Imaging Reporting and Data System version 2.1. The lesion- and participant-level performance of a previously developed cascaded deep learning algorithm was compared with histopathologic outcomes and radiologist readings using sensitivity, positive predictive value (PPV), and Dice similarity coefficient (DSC). Results A total of 658 male participants (median age, 67 years [IQR, 61-71 years]) with 1029 MRI-visible lesions were included. At histopathologic analysis, 45% (294 of 658) of participants had lesions of International Society of Urological Pathology (ISUP) grade group (GG) 2 or higher. The algorithm identified 96% (282 of 294; 95% CI 94%, 98%) of all participants with clinically significant PCa, whereas the radiologist identified 98% (287 of 294; 95% CI 96%, 99%; P = .23). The algorithm identified 84% (103 of 122), 96% (152 of 159), 96% (47 of 49), 95% (38 of 40), and 98% (45 of 46) of participants with ISUP GG 1, 2, 3, 4, and 5 lesions, respectively. In the lesion-level analysis using radiologist ground truth, the detection sensitivity was 55% (569 of 1029; 95% CI 52%, 58%), and the PPV was 57% (535 of 934; 95% CI 54%, 61%). The mean number of false-positive lesions per participant was 0.61 (range, 0-3). The lesion segmentation DSC was 0.29. Conclusion The AI algorithm detected cancer-suspicious lesions on biparametric MRI scans with a performance comparable to that of an experienced radiologist. Moreover, the algorithm reliably predicted clinically significant lesions at histopathologic examination. ClinicalTrials.gov Identifier NCT03354416 © RSNA, 2024 Supplemental material is available for this article.
Asunto(s)

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Neoplasias de la Próstata / Aprendizaje Profundo / Imágenes de Resonancia Magnética Multiparamétrica Límite: Aged / Humans / Male / Middle aged Idioma: En Revista: Radiology Año: 2024 Tipo del documento: Article

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Neoplasias de la Próstata / Aprendizaje Profundo / Imágenes de Resonancia Magnética Multiparamétrica Límite: Aged / Humans / Male / Middle aged Idioma: En Revista: Radiology Año: 2024 Tipo del documento: Article