What interests me

I enjoy doing research. Overall, I have a lot of questions and a lot of ideas popping in my head. Having background in nursing, (I did have some experience in the field as a nurse too) I do have more interest in making contribution in healthcare. But my interests are not confined to healthcare. As for my studies, I am currently focusing on bridging the gaps between the technological advances in computer science and healthcare. My research are mostly on NLP, these days its mostly about LLMs and developing applications that would help physicians and patients out there. If you find my works interesting and want to collaborate, email me, please reach out!

Where I studied, and still at

  • (2023 September - current) Computer Science PhD student at Miner School of Computer & Information Sciences, University of Massachusetts Lowell
  • (2021 March - 2023 August) Master of Science - Department of Biomedical Systems Informatics, College of Medicine, Yonsei University
  • (2013 March - 2017 Feburary) Bachelor of Science in Nursing - Wonju College of Medicine, Yonsei University

Projects

  • Smart Pharmacovigilance Platform - Nationwide project developing pharmacovigilance platform for hospitals (December ‘21)
  • Clinical Data Synthesis with Cancer Dataset from General Hospitals in Korea (December ‘22)
  • ChatBot NoteAid - Developing technologies that would aid patients to understand more about their electronic healthcare records to enhance health literacy (October ‘24)

Publications

  • Sung & Jang et al (2023). Prognostic value of baseline and early treatment response treatment response of neutrophil-lymphocyte ratio, C-reactive protein, and lactate dehydrogenase in non-small cell lung cancer patients undergoing immunotherapy: Translational Lung Cancer Research
  • Yang & Yao et al (2023). Performance of Multimodal GPT-4V on USMLE with Image: Potential for Imaging Diagnostic Support with Explanations : medRxiv
  • Kim & Jang et al (2024). Synthetic Data improves Survival Prediction Models in Early-Onset Colorectal Cancer: Journal of Clinical Oncology
  • Yao et al (2024). MedQA-CS: Benchmarking Large Language Models Clinical Skills Using an AI-SCE Framework : Arxiv
  • Kim et al (2024). PPFL: A personalized progressive federated learning method for leveraging different healthcare institution-specific features : iScience

Conference

  • Kim et al (2023). Personalized Progressive Federated Learning with Leveraging Client-Specific Vertical Features: Computer Science & IT conference Proceedings

Honors and Awards

  • Awarded Best Thesis of The Korean Society of Medical Informatics (KOSMI) Fall academic conference - November, 2022