Literature DB >> 32630787

Multiparametric MRI for Prostate Cancer Characterization: Combined Use of Radiomics Model with PI-RADS and Clinical Parameters.

Piotr Woźnicki1, Niklas Westhoff2, Thomas Huber3, Philipp Riffel3, Matthias F Froelich3, Eva Gresser4, Jost von Hardenberg2, Alexander Mühlberg5, Maurice Stephan Michel2, Stefan O Schoenberg3, Dominik Nörenberg3.   

Abstract

Radiomics is an emerging field of image analysis with potential applications in patient risk stratification. This study developed and evaluated machine learning models using quantitative radiomic features extracted from multiparametric magnetic resonance imaging (mpMRI) to detect and classify prostate cancer (PCa). In total, 191 patients that underwent prostatic mpMRI and combined targeted and systematic fusion biopsy were retrospectively included. Segmentations of the whole prostate glands and index lesions were performed manually in apparent diffusion coefficient (ADC) maps and T2-weighted MRI. Radiomic features were extracted from regions corresponding to the whole prostate gland and index lesion. The best performing combination of feature setup and classifier was selected to compare its predictive ability of the radiologist's evaluation (PI-RADS), mean ADC, prostate specific antigen density (PSAD) and digital rectal examination (DRE) using receiver operating characteristic (ROC) analysis. Models were evaluated using repeated 5-fold cross-validation and a separate independent test cohort. In the test cohort, an ensemble model combining a radiomics model, with models for PI-RADS, PSAD and DRE achieved high predictive AUCs for the differentiation of (i) malignant from benign prostatic lesions (AUC = 0.889) and of (ii) clinically significant (csPCa) from clinically insignificant PCa (cisPCa) (AUC = 0.844). Our combined model was numerically superior to PI-RADS for cancer detection (AUC = 0.779; p = 0.054) as well as for clinical significance prediction (AUC = 0.688; p = 0.209) and showed a significantly better performance compared to mADC for csPCa prediction (AUC = 0.571; p = 0.022). In our study, radiomics accurately characterizes prostatic index lesions and shows performance comparable to radiologists for PCa characterization. Quantitative image data represent a potential biomarker, which, when combined with PI-RADS, PSAD and DRE, predicts csPCa more accurately than mADC. Prognostic machine learning models could assist in csPCa detection and patient selection for MRI-guided biopsy.

Entities:  

Keywords:  PI-RADS; PSA; artificial intelligence; machine learning; magnetic resonance imaging; prostatic neoplasm; radiomics

Year:  2020        PMID: 32630787     DOI: 10.3390/cancers12071767

Source DB:  PubMed          Journal:  Cancers (Basel)        ISSN: 2072-6694            Impact factor:   6.639


  18 in total

1.  Quantitative Analysis of Diffusion Weighted Imaging May Improve Risk Stratification of Prostatic Transition Zone Lesions.

Authors:  Hannes Engel; Benedict Oerther; Marco Reisert; Elias Kellner; August Sigle; Christian Gratzke; Peter Bronsert; Tobias Krauss; Fabian Bamberg; Matthias Benndorf
Journal:  In Vivo       Date:  2022 Sep-Oct       Impact factor: 2.406

2.  Evaluation of a multiparametric MRI radiomic-based approach for stratification of equivocal PI-RADS 3 and upgraded PI-RADS 4 prostatic lesions.

Authors:  Valentina Brancato; Marco Aiello; Luca Basso; Serena Monti; Luigi Palumbo; Giuseppe Di Costanzo; Marco Salvatore; Alfonso Ragozzino; Carlo Cavaliere
Journal:  Sci Rep       Date:  2021-01-12       Impact factor: 4.379

3.  Associations between Statin/Omega3 Usage and MRI-Based Radiomics Signatures in Prostate Cancer.

Authors:  Yu Shi; Ethan Wahle; Qian Du; Luke Krajewski; Xiaoying Liang; Sumin Zhou; Chi Zhang; Michael Baine; Dandan Zheng
Journal:  Diagnostics (Basel)       Date:  2021-01-07

4.  A Nomogram Based on a Multiparametric Ultrasound Radiomics Model for Discrimination Between Malignant and Benign Prostate Lesions.

Authors:  Lei Liang; Xin Zhi; Ya Sun; Huarong Li; Jiajun Wang; Jingxu Xu; Jun Guo
Journal:  Front Oncol       Date:  2021-03-02       Impact factor: 6.244

5.  Deep learning for fully automatic detection, segmentation, and Gleason grade estimation of prostate cancer in multiparametric magnetic resonance images.

Authors:  Oscar J Pellicer-Valero; José L Marenco Jiménez; Victor Gonzalez-Perez; Juan Luis Casanova Ramón-Borja; Isabel Martín García; María Barrios Benito; Paula Pelechano Gómez; José Rubio-Briones; María José Rupérez; José D Martín-Guerrero
Journal:  Sci Rep       Date:  2022-02-22       Impact factor: 4.379

Review 6.  [MRI-guided minimally invasive treatment of prostate cancer].

Authors:  Fabian Tollens; Niklas Westhoff; Jost von Hardenberg; Sven Clausen; Michael Ehmann; Frank G Zöllner; Anne Adlung; Dominik F Bauer; Stefan O Schoenberg; Dominik Nörenberg
Journal:  Radiologe       Date:  2021-07-12       Impact factor: 0.635

Review 7.  Artificial Intelligence Based Algorithms for Prostate Cancer Classification and Detection on Magnetic Resonance Imaging: A Narrative Review.

Authors:  Jasper J Twilt; Kicky G van Leeuwen; Henkjan J Huisman; Jurgen J Fütterer; Maarten de Rooij
Journal:  Diagnostics (Basel)       Date:  2021-05-26

Review 8.  Radiomics in prostate cancer imaging for a personalized treatment approach - current aspects of methodology and a systematic review on validated studies.

Authors:  Simon K B Spohn; Alisa S Bettermann; Fabian Bamberg; Matthias Benndorf; Michael Mix; Nils H Nicolay; Tobias Fechter; Tobias Hölscher; Radu Grosu; Arturo Chiti; Anca L Grosu; Constantinos Zamboglou
Journal:  Theranostics       Date:  2021-07-06       Impact factor: 11.556

9.  Using IVIM Parameters to Differentiate Prostate Cancer and Contralateral Normal Tissue through Fusion of MRI Images with Whole-Mount Pathology Specimen Images by Control Point Registration Method.

Authors:  Cheng-Chun Lee; Kuang-Hsi Chang; Feng-Mao Chiu; Yen-Chuan Ou; Jen-I Hwang; Kuan-Chun Hsueh; Hueng-Chuen Fan
Journal:  Diagnostics (Basel)       Date:  2021-12-12

10.  Prediction of Clinically Significant Cancer Using Radiomics Features of Pre-Biopsy of Multiparametric MRI in Men Suspected of Prostate Cancer.

Authors:  Chidozie N Ogbonnaya; Xinyu Zhang; Basim S O Alsaedi; Norman Pratt; Yilong Zhang; Lisa Johnston; Ghulam Nabi
Journal:  Cancers (Basel)       Date:  2021-12-09       Impact factor: 6.639

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