Radiomics analysis of 18F-Choline PET/CT in the prediction of disease outcome in high-risk prostate cancer: an explorative study on machine learning feature classification in 94 patients

被引:60
作者
Alongi, Pierpaolo [1 ]
Stefano, Alessandro [2 ]
Comelli, Albert [3 ]
Laudicella, Riccardo [4 ]
Scalisi, Salvatore [1 ]
Arnone, Giuseppe [5 ]
Barone, Stefano [6 ]
Spada, Massimiliano [7 ]
Purpura, Pierpaolo [8 ]
Bartolotta, Tommaso Vincenzo [5 ,8 ]
Midiri, Massimo [5 ]
Lagalla, Roberto [5 ]
Russo, Giorgio [2 ]
机构
[1] Fdn Ist G Giglio, Nucl Med Unit, I-90015 Cefalu, PA, Italy
[2] Natl Res Council CNR, Inst Mol Bioimaging & Physiol, Cefalu, PA, Italy
[3] Ri MED Fdn, Palermo, Italy
[4] Univ Messina, Dept Biomed & Dent Sci & Morphofunct Imaging, Nucl Med Unit, Messina, Italy
[5] Univ Palermo, Dept Biomed Neurosci & Adv Diagnost, Palermo, Italy
[6] Univ Palermo, Dipartimento Sci Agron Alimentari & Forestali SAA, Palermo, Italy
[7] Fdn Ist G Giglio, Unit Oncol, Cefalu, PA, Italy
[8] Fdn Ist Giuseppe Giglio Ct Pietrapollastra, Dept Radiol, Via Pisciotto, I-90015 Palermo, Italy
关键词
Prostate cancer; Positron emission tomography computed tomography; Choline; Radiomics; Machine learning; RECURRENCE; ANTIGEN;
D O I
10.1007/s00330-020-07617-8
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Objective: The aim of this study was (1) to investigate the application of texture analysis of choline PET/CT images in prostate cancer (PCa) patients and (2) to propose a machine-learning radiomics model able to select PET features predictive of disease progression in PCa patients with a same high-risk class at restaging. Material and methods: Ninety-four high-risk PCa patients who underwent restaging Cho-PET/CT were analyzed. Follow-up data were recorded for a minimum of 13 months after the PET/CT scan. PET images were imported in LIFEx toolbox to extract 51 features from each lesion. A statistical system based on correlation matrix and point-biserial-correlation coefficient has been implemented for features reduction and selection, while Discriminant analysis (DA) was used as a method for features classification in a whole sample and sub-groups for primary tumor or local relapse (T), nodal disease (N), and metastatic disease (M). Results: In the whole group, 2 feature (HISTO_Entropy_log10; HISTO_Energy_Uniformity) results were able to discriminate the occurrence of disease progression at follow-up, obtaining the best performance in DA classification (sensitivity 47.1%, specificity 76.5%, positive predictive value (PPV) 46.7%, and accuracy 67.6%). In the sub-group analysis, the best performance in DA classification for T was obtained by selecting 3 features (SUVmin; SHAPE_Sphericity; GLCM_Correlation) with a sensitivity of 91.6%, specificity 84.1%, PPV 79.1%, and accuracy 87%; for N by selecting 2 features (HISTO = _Energy Uniformity; GLZLM_SZLGE) with a sensitivity of 68.1%, specificity 91.4%, PPV 83%, and accuracy 82.6%; and for M by selecting 2 features (HISTO_Entropy_log10 - HISTO_Entropy_log2) with a sensitivity 64.4%, specificity 74.6%, PPV 40.6%, and accuracy 72.5%. Conclusion: This machine learning model demonstrated to be feasible and useful to select Cho-PET features for T, N, and M with valuable association with high-risk PCa patients' outcomes.
引用
收藏
页码:4595 / 4605
页数:11
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