2017 Annual Meeting
(192ae) Pharmacometabonomics Approach for Early Prediction of Neuropathy
Authors
We are using pharmacometabonomics approach to find metabolites as biomarkers that can predict VIPN severity in pediatric ALL patients. In a retrospective pilot study done on 12 patients, metabolites were found to be differentially expressed in high and low VIPN patients. Presently, retrospective non-fasting plasma samples of 36 pediatric ALL patients are being used. These samples were collected at three time points: day 8, day 29 of induction period, and after around 6 months from the start of the therapy. A preliminary analysis (feature selection using elastic net logistic regression) showed that a set of 17 metabolites in +6 months samples could accurately identify patients with high and low VIPN. A logistic regression model built with these 17 metabolites had an area under the Receiver Operating Characteristics curve of 0.99. Currently, extensive analysis of metabolomics data at all the time points is being done. We aim to find metabolites that are becoming differentially expressed over time. Longitudinal feature selection algorithms are being explored for this purpose. To further explore the biomarkers found, we intend to identify the structure of these metabolites and find their relevant pathways.