1 research outputs found
Ultra-high dimensional confounder selection algorithms comparison with application to radiomics data
Radiomics is an emerging area of medical imaging data analysis particularly
for cancer. It involves the conversion of digital medical images into mineable
ultra-high dimensional data. Machine learning algorithms are widely used in
radiomics data analysis to develop powerful decision support model to improve
precision in diagnosis, assessment of prognosis and prediction of therapy
response. However, machine learning algorithms for causal inference have not
been previously employed in radiomics analysis. In this paper, we evaluate the
value of machine learning algorithms for causal inference in radiomics. We
select three recent competitive variable selection algorithms for causal
inference: outcome-adaptive lasso (OAL), generalized outcome-adaptive lasso
(GOAL) and causal ball screening (CBS). We used a sure independence screening
procedure to propose an extension of GOAL and OAL for ultra-high dimensional
data, SIS + GOAL and SIS + OAL. We compared SIS + GOAL, SIS + OAL and CBS using
simulation study and two radiomics datasets in cancer, osteosarcoma and
gliosarcoma. The two radiomics studies and the simulation study identified SIS
+ GOAL as the optimal variable selection algorithm