I am a computer scientist and expert in magnetic resonance imaging (MRI) with a long-standing commitment to develop and validate robust, clinically-effective computer-aided diagnosis systems. My research areas include machine learning, deep learning and medical imaging. I am committed to lending my expertise in neuroimaging and computer science to facilitate major breakthroughs in the medical field by optimizing imaging acquisition and aiding doctors in disease diagnosis, outcome prediction, image segmentation and interpretation as well as treatment decision-making and assessment.
I have been leading our team of artificial intelligence (AI) for computer aided diagnosis (AI-CAD) to develop algorithms to:
The current AI technique is rapidly moving from an experimental phase to an implementation phase in many fields. It is expected that medical AI will surpass human performance in specific applications within the coming years. Physicians and patients will likely benefit from the human-AI interaction. Since I have distinguished myself as a front-runner in medical imaging-based AI, I look forward to leading this endeavor at Cincinnati Children's Hospital Medical Center.
BS: Electrical Engineering, Tsinghua University, Beijing, China, 1998
MS: Computer Science, University of Missouri, Columbia, MO, 2003
PhD: Computer Science and Engineering, University of Connecticut, Storrs, CT, 2008
Post-Doctoral: Massachusetts General Hospital, Harvard Medical School, Boston, MA, 2010
Machine learning; deep learning; medical image processing and analysis
Functional connectivity patterns as an early indicator of later very early preterm outcomes. Developmental Cognitive Neuroscience. 2026; 79:101711.
Development and validation of a deep learning model for liver shear stiffness regression using abdominal multiparametric MRI across multiple sites and vendors. European Radiology. 2026.
Prediction of Fontan failure and correlates of Fontan-associated liver disease severity using machine learning and radiomic features from multi-parametric abdominal MRI. Pediatric Radiology. 2026; 56(4):831-842.
Transformer-encoded nnU-Net with local region perceptron and contrastive learning (TLC-nnUNet) for multiple brain metastasis detection and delineation. Physics in Medicine and Biology. 2026; 71(5).
Mapping white matter microstructure at term age to motor outcomes at 2 years in very preterm infants: a multicentre cohort study. Archives of Disease in Childhood: Fetal and Neonatal Edition. 2026.
Diffuse white matter abnormality is independently predictive of neurodevelopmental outcomes in preterm infants. Archives of Disease in Childhood: Fetal and Neonatal Edition. 2026; 111(2):F115-F122.
Altered neurobehavioral white matter integrity in preterm children: A confounding-controlled analysis using the adolescent brain and cognitive development (ABCD) study. NeuroImage. 2025; 323:121600.
Utility of Deep Learning to Address Missing Modalities from Multi-Modal Medical Imaging Studies: A Systematic Review. Artif Intell Appl. 2025.
Development and Validation of a Modality-Invariant 3D Swin U-Net Transformer for Liver and Spleen Segmentation on Multi-Site Clinical Bi-parametric MR Images. J Imaging Inform Med. 2025; 38(5):2688-2699.
RadCLIP: Enhancing Radiologic Image Analysis Through Contrastive Language-Image Pretraining. IEEE Transactions on Neural Networks and Learning Systems. 2025; 36(10):17613-17622.
Lili He, PhD12/31/2019