| Literature DB >> 33687294 |
Mengmeng Yan1,2, Weidong Wang3,4.
Abstract
To predict the volume change of stage III NSCLC after radiotherapy with 60 Gy.This retrospective study included two independent cohorts, a train cohort of 192 patients, and a test cohort of 31 patients. We developed a radiomics model based on radiomics features and clinical variables. LIFEx package was used to extract radiomics texture features from CT images. The classification method was logistic regression analysis and feature selection was performed by correlation coefficients. Performance metrics of logistic regression include accuracy, precision, the receiver operating characteristic curves, and recall.The combination features of clinical variables and radiomics can predict the tumor volume change after radiotherapy with 88.7% accuracy (88.6% precision, 88.7% recall, and 88.7% ROC area).Radiomics features combined with medical knowledge have a great potential to predict accurately tumor volume change of stage III NSCLC after radiotherapy with 60 Gy.Entities:
Keywords: Radiomics; lung cancer; medical knowledge; precision medicine
Mesh:
Year: 2021 PMID: 33687294 DOI: 10.1177/0036850421997295
Source DB: PubMed Journal: Sci Prog ISSN: 0036-8504 Impact factor: 2.774