Literature DB >> 34214211

Utility of radiomic zones for risk classification and clinical outcome predictions using supervised machine learning during simultaneous 11 C-choline PET/MRI acquisition in prostate cancer patients.

Shu-Ju Tu1,2, Vuong T Tran1, Jian M Teo1,3, Wen C Chong1,3, Jing-Ren Tseng1,4.   

Abstract

PURPOSE: In most radiomic studies related to cancer research, the traditional tumor-centric view has predominated. In this retrospective study, we go beyond the single-tumor region and investigate the utility of proposed radiomic zones for risk classification and clinical outcome predictions using radiomic features extracted from 11 C-choline positron emission tomography (PET) imaging and supervised machine learning in prostate tumors.
MATERIALS AND METHODS: Seventy-seven prostate tumors were selected and delineated. The prostate organ was divided into three radiomic zones, with zone-1 being the metabolic tumor zone, zone-2 the proximal peripheral tumor zone, and zone-3 the extended peripheral tumor zone. LIFEx was used for PET-radiomic feature extraction. Risk groups were created using Gleason scores (GS), prostate-specific antigen (PSA) levels, clinical TNM staging, and progression-free survival (PFS). Random forest (RF) and AdaBoost advanced machine learning algorithms were used for supervised machine learning. Accuracy, positive predictive value, area under the receiver operating characteristic curve (AreaROC), and other metrics were calculated for comparisons of predictive performance between zones.
RESULTS: For the GS risk classification group, the accuracies of risk classification predictions were 71%, 71%, and 67% using RF and 65%, 64%, and 63% using AdaBoost for zones -1, -2, and -3, respectively. For the PSA group, the accuracies of risk classification predictions were 74%, 65%, and 64% using RF and 76%, 66%, and 67% using AdaBoost for zones -1, -2, and -3, respectively. For the TNM group, the accuracies of risk classification predictions were 68%, 76%, and 78% using RF and 66%, 75%, and 80% using AdaBoost for zones -1, -2, and -3, respectively. For the PFS group, the accuracies of clinical outcome predictions were 77%, 75%, and 83% using RF and 77%, 74%, and 83% using AdaBoost in zones -1, -2, and -3, respectively.
CONCLUSIONS: We proposed three radiomic zones with different standard uptake value characteristics and created four risk groups of prostate cancer patients for testing this idea. We showed that these radiomic zones have different predicting strengths in classifying risk groups and might allow us to identify a radiomic zone with higher accuracy for patient outcome prediction.
© 2021 American Association of Physicists in Medicine.

Entities:  

Keywords:  11C-choline PET; machine learning; prostate cancer; radiomic zones; radiomics

Year:  2021        PMID: 34214211     DOI: 10.1002/mp.15064

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  6 in total

1.  Machine learning-based radiomics for multiple primary prostate cancer biological characteristics prediction with 18F-PSMA-1007 PET: comparison among different volume segmentation thresholds.

Authors:  Kun Tang; Yunjun Yang; Fei Yao; Shuying Bian; Dongqin Zhu; Yaping Yuan; Kehua Pan; Zhifang Pan; Xianghao Feng
Journal:  Radiol Med       Date:  2022-08-26       Impact factor: 6.313

Review 2.  Radiomics in Oncological PET Imaging: A Systematic Review-Part 2, Infradiaphragmatic Cancers, Blood Malignancies, Melanoma and Musculoskeletal Cancers.

Authors:  David Morland; Elizabeth Katherine Anna Triumbari; Luca Boldrini; Roberto Gatta; Daniele Pizzuto; Salvatore Annunziata
Journal:  Diagnostics (Basel)       Date:  2022-05-27

Review 3.  Additional Value of PET Radiomic Features for the Initial Staging of Prostate Cancer: A Systematic Review from the Literature.

Authors:  Priscilla Guglielmo; Francesca Marturano; Andrea Bettinelli; Michele Gregianin; Marta Paiusco; Laura Evangelista
Journal:  Cancers (Basel)       Date:  2021-11-30       Impact factor: 6.639

4.  Machine learning prediction of prostate cancer from transrectal ultrasound video clips.

Authors:  Kai Wang; Peizhe Chen; Bojian Feng; Jing Tu; Zhengbiao Hu; Maoliang Zhang; Jie Yang; Ying Zhan; Jincao Yao; Dong Xu
Journal:  Front Oncol       Date:  2022-08-26       Impact factor: 5.738

5.  18F-Fluoroethylcholine PET/CT Radiomic Analysis for Newly Diagnosed Prostate Cancer Patients: A Monocentric Study.

Authors:  Daniele Antonio Pizzuto; Elizabeth Katherine Anna Triumbari; David Morland; Luca Boldrini; Roberto Gatta; Giorgio Treglia; Riccardo Bientinesi; Marco De Summa; Marina De Risi; Carmelo Caldarella; Eros Scarciglia; Angelo Totaro; Salvatore Annunziata
Journal:  Int J Mol Sci       Date:  2022-08-14       Impact factor: 6.208

6.  68Ga-PSMA-11 PET/CT Features Extracted from Different Radiomic Zones Predict Response to Androgen Deprivation Therapy in Patients with Advanced Prostate Cancer.

Authors:  Vuong Thuy Tran; Shu-Ju Tu; Jing-Ren Tseng
Journal:  Cancers (Basel)       Date:  2022-10-03       Impact factor: 6.575

  6 in total

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