Dr. La Cava is the Director of the Clinical AI Value Alignment laboratory (CAVA lab, cavalab.org).
His group is interested in improving the trustworthiness of artificial intelligence (AI) models deployed in healthcare settings. They study algorithmic notions of interpretability, fairness, accuracy, and robustness in medical applications of AI.
Research Background
Prior to joining CHIP, he was a post-doctoral fellow and research associate in the Institute for Biomedical Informatics at the University of Pennsylvania. He received his PhD from UMass Amherst with a focus on interpretable machine learning for modelling dynamical systems.
Publications
Deep survival analysis from adult and pediatric electrocardiograms: a multi-center benchmark study. BioData Min. 2025 Dec 17; 19(1):6. View Abstract
The future of algorithmic nondiscrimination compliance in the affordable care act. NPJ Digit Med. 2025 Dec 10; 9(1):49. View Abstract
Intrapartum electronic fetal heart rate monitoring to predict acidemia at birth with the use of deep learning. Am J Obstet Gynecol. 2025 Jan; 232(1):116.e1-116.e9. View Abstract
Pediatric ECG-Based Deep Learning to Predict Left Ventricular Dysfunction and Remodeling. Circulation. 2024 03 19; 149(12):917-931. View Abstract
Effects of Race and Gender Classifications on Atherosclerotic Cardiovascular Disease Risk Estimates for Clinical Decision-Making in a Cohort of Black Transgender Women. Health Equity. 2023; 7(1):803-808. View Abstract
A flexible symbolic regression method for constructing interpretable clinical prediction models. NPJ Digit Med. 2023 Jun 05; 6(1):107. View Abstract
Translating Intersectionality to Fair Machine Learning in Health Sciences. Nat Mach Intell. 2023 May; 5(5):476-479. View Abstract
Informative missingness: What can we learn from patterns in missing laboratory data in the electronic health record? J Biomed Inform. 2023 03; 139:104306. View Abstract
PMLB v1.0: an open-source dataset collection for benchmarking machine learning methods. Bioinformatics. 2022 01 12; 38(3):878-880. View Abstract
Contemporary Symbolic Regression Methods and their Relative Performance. Adv Neural Inf Process Syst. 2021 Dec; 2021(DB1):1-16. View Abstract
Evaluating recommender systems for AI-driven biomedical informatics. Bioinformatics. 2021 04 19; 37(2):250-256. View Abstract
Learning feature spaces for regression with genetic programming. Genet Program Evolvable Mach. 2020 Sep; 21(3):433-467. View Abstract
Interpretation of machine learning predictions for patient outcomes in electronic health records. AMIA Annu Symp Proc. 2019; 2019:572-581. View Abstract