Investigator

Nicholas Eustace

University of Alabama at Birmingham

NENicholas Eustace
Papers(1)
Explainable artificia…
Collaborators(5)
Scott GlaserYi-Jen ChenAna TergasColton LadburyMihae Song
Institutions(1)
City Of Hope National…

Papers

Explainable artificial intelligence analysis of brachytherapy boost receipt in cervical cancer during the COVID-19 era

Brachytherapy is a critical component of the standard-of-care curative radiotherapy regimen for women with locally advanced cervical cancer (LACC). However, existing literature suggests that many patients will not receive the brachytherapy boost. We used machine learning (ML) and explainable artificial intelligence to characterize this disparity. Patients with LACC diagnosed from 2004 to 2020 who received definitive radiation were identified in the National Cancer Database. Five ML models were trained to predict if a patient received a brachytherapy boost. The best-performing model was explained using SHapley Additive exPlanation (SHAP) values. To identify trends that may be attributable to the coronavirus disease 2019 (COVID-19) pandemic, the previous analysis was repeated and limited to 2019 to 2020. A total of 37,564 patients with LACC were identified; 5799 were diagnosed from 2019 to 2020 (COVID cohort). Of these patients, 59.3% received a brachytherapy boost, with 76.4% of patients diagnosed in 2019 to 2020 receiving a boost. The random forest model achieved the best performance for both the overall and COVID cohorts. In the overall cohort, the most important predictive features were the year of diagnosis, stage, age, and insurance status. In the COVID cohort, the most important predictive features were FIGO stage, age, insurance status, and hospital type. Of the 26 patients who tested positive for COVID-19 during their course of radiotherapy, 19 (73.1%) received a brachytherapy boost. A gradual increase in brachytherapy boost utilization has been noted, which did not seem to be significantly impacted by the onset of the COVID-19 pandemic. ML could be considered to identify patient populations where brachytherapy is underutilized, which can provide actionable feedback for improving access.

16Works
1Papers
5Collaborators
Carcinoma, Non-Small-Cell LungLung NeoplasmsNeoplasm Recurrence, LocalPrognosisNeoplasm StagingTumor Hypoxia

Positions

Researcher

University of Alabama at Birmingham

2022–

Radiation Oncology Resident

City Of Hope National Medical Center · Radiation Oncology

2021–

General Surgery Internship

University of Washington Medical Center · Surgery

2010–

Lab Technician - Link ET

Moffitt Cancer Center

Education

2012

M.D.

University of Alabama School of Medicine

2019

Ph.D.

University of Alabama at Birmingham · Cancer Biology

2012

B.S. Biology

University of South Florida · Honors College