Investigator

K. Wang

Assistant Professor · University of Colorado Anschutz Medical Campus, Radiation Oncology

KWK. Wang
Papers(1)
Progression-Free Surv…
Collaborators(2)
S. TangAllen Yen
Institutions(2)
Unknown InstitutionThe University Of Tex…

Papers

Progression-Free Survival Prediction for Locally Advanced Cervical Cancer After Chemoradiotherapy With MRI-based Radiomics

A significant proportion of locally advanced cervical cancer (LACC) patients experience disease progression post chemoradiotherapy (CRT). Currently existing clinical variables are suboptimal predictors of treatment response. This study reported a radiomics-based model leveraging information extracted from magnetic resonance (MR) T2-weighted image (T2WI) to predict the progression-free survival (PFS) for LACC following CRT. Radiomics features were extracted from pre-treatment MR T2WI in 105 LACC patients. Following pre-feature selection and a step forward feature selection method, an optimal feature set was determined with a Cox proportional hazard (CPH) model. The PFS predictions were generated through a radiomics-clinical combined model utilized five repeated nested 5-fold cross-validation (5-fold CV). Disease progression risk was stratified into high- and low-risk groups based on the predicted PFS and assessed by Kaplan-Meier analysis. The radiomics texture feature extracted from MR T2WI significantly predict PFS in LACC after CRT. In comparison with the model using clinical variables alone, the radiomics-clinical combined model achieves significantly improved performance in testing patient cohort, achieving higher C-index (0.748 vs 0.655) and area under the curve (0.798 vs 0.660 for 2-year PFS). Meanwhile, the proposed method significantly differentiated the high- and low-risk patients groups for disease progression (P < 0.001). An MR T2WI-based radiomics and clinical combined model provided improved prognostic capabilities in predicting the PFS for LACC patients treated with CRT, outperforming a model using clinical variables alone. The incorporation of MR T2WI-based radiomics is promising in assisting in personalized management in LACC, indicating the potential of MR T2WI radiomics as imaging biomarker.

28Works
1Papers
2Collaborators
Head and Neck NeoplasmsNeoplasm Metastasis

Positions

2025–

Assistant Professor

University of Colorado Anschutz Medical Campus · Radiation Oncology

2023–

Researcher

University of Maryland Medical Center

Education

2023

Ph.D student

University of Texas Southwestern Medical Center · Radation Oncology

2018

Graduate Student

Xi'an Jiaotong University

2015

Undergraduate Student

Xi'an Jiaotong University

Links & IDs
0000-0003-2155-1445

Scopus: 57216440366