Title of article :
Prediction of Chemotherapy Response of Osteosarcoma Using Baseline 18F-FDG Textural Features Machine Learning Approaches with PCA
Author/Authors :
Jeong, Su Young Samsung Sotong Clinic - Namyangju - Kyeonggi-do, Republic of Korea , Kim, Wook Korea Institute of Radiological and Medical Sciences - Seoul, Republic of Korea , Byun, Byung Hyun Department of Nuclear Medicine - Korea Institute of Radiological and Medical Sciences - Seoul, Republic of Korea , Kong, Chang-Bae Department of Orthopedic Surgery - Korea Institute of Radiological and Medical Sciences - Seoul, Republic of Korea , Song, Won Seok Department of Orthopedic Surgery - Korea Institute of Radiological and Medical Sciences - Seoul, Republic of Korea , Lim, Ilhan Department of Nuclear Medicine - Korea Institute of Radiological and Medical Sciences - Seoul, Republic of Korea , Lim, Sang Moo Department of Nuclear Medicine - Korea Institute of Radiological and Medical Sciences - Seoul, Republic of Korea , Woo, Sang-Keun Korea Institute of Radiological and Medical Sciences - Seoul, Republic of Korea
Pages :
7
From page :
1
To page :
7
Abstract :
Patients with high-grade osteosarcoma undergo several chemotherapy cycles before surgical intervention. Response to chemotherapy, however, is affected by intratumor heterogeneity. In this study, we assessed the ability of a machine learning approach using baseline 18F-fluorodeoxyglucose (18F-FDG) positron emitted tomography (PET) textural features to predict response to chemotherapy in osteosarcoma patients. Materials and Methods. This study included 70 osteosarcoma patients who received neoadjuvant chemotherapy. Quantitative characteristics of the tumors were evaluated by standard uptake value (SUV), total lesion glycolysis (TLG), and metabolic tumor volume (MTV). Tumor heterogeneity was evaluated using textural analysis of 18F-FDG PET scan images. Assessments were performed at baseline and after chemotherapy using 18F-FDG PET; 18F-FDG textural features were evaluated using the Chang-Gung Image Texture Analysis toolbox. To predict the chemotherapy response, several features were chosen using the principal component analysis (PCA) feature selection method. Machine learning was performed using linear support vector machine (SVM), random forest, and gradient boost methods. The ability to predict chemotherapy response was evaluated using the area under the receiver operating characteristic curve (AUC). Results. AUCs of the baseline 18F-FDG features SUVmax, TLG, MTV, 1st entropy, and gray level co-occurrence matrix entropy were 0.553, 0538, 0.536, 0.538, and 0.543, respectively. However, AUCs of the machine learning features linear SVM, random forest, and gradient boost were 0.72, 0.78, and 0.82, respectively. Conclusion. We found that a machine learning approach based on 18F-FDG textural features could predict the chemotherapy response using baseline PET images. This early prediction of the chemotherapy response may aid in determining treatment plans for osteosarcoma patients.
Keywords :
18F-FDG , PCA , Machine , NAC
Journal title :
Contrast Media and Molecular Imaging
Serial Year :
2019
Full Text URL :
Record number :
2618603
Link To Document :
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