Welcome to LESSON (Less-On) Lab

Medical physics beginning with the discovery of X-rays in the 1890s is a field of applied physics that utilizes physics principles, knowledge, and methods to the prevention, diagnosis, and treatment of human diseases to enhance human health and well-being in practice and research.  Medical physics has been closely associated with X-ray photon and electron radiation therapy on linear accelerators. To help improve therapeutic accuracy, it deals with a variety of medical imaging modalities, such as computed tomography (CT), positron emission tomography (PET), magnetic resonance imaging (MRI), and Ultrasound. It is believed that medical physics is entering a renaissance era with the rise of particle radiation therapy, and artificial intelligence (AI) - machine learning and deep learning. The rapid transition requires medical physicists and researchers to have a concrete understanding of complicated techniques and knowledge behind such advances. 

LESSON lab is a research group specializing in medical physics, and our primary focus is on tackling the complex challenges that arise in the context of radiation treatment and associated treatment-preparation activities. To be more specific, we are interested in constructing efficient, automated pathways by turning something less on (lesson), and finding optimal solutions by combining appropriate objectives and constraints with the aid of learning-based approaches and computational optimizing algorithms. We are currently developing 1) treatment plan optimization algorithms for the new therapeutic modalities, 2) new learning-based networks for medical image processing, and 3) outcome predictive models in relation to radiotherapy treatment. 

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Contact Information and Notice 

Recruit

We are hiring highly motivated students who are interested in medical physics with programming experience and physics /engineering background. Please send your CV to Dr. Kim at HJHENRYKIM@yuhs.ac

News

June 2024   Hyeonjeong Cho's paper ( "Generating 3D images of VMAT plans for predictive models and activation maps associated with plan                                                deliverability")  was accepted by Medical Physics. Congratulations on your achievement!

Apr 2024      Prof. Kim received a Young Faculty Grant from National Research Foundation.

Apr 2024      Prof. Kim's paper ("Clinical feasibility of deep learning-based synthetic CT images from T2-weighted MR images for cervical cancer                                          patients compared to MRCAT") was accepted and published in Scientific Reports.

Mar 2024      Sac Lee joined our group. Welcome to our lab!!

Nov 2023      Hyeonjeong Cho's paper ( "Empowering Vision Transformer by Network Hyper-Parameter Selection for Whole Pelvis Prostate                                                      Planning Target Volume Auto-Segmentation") was accepted and pusblished in Cancers. Congratulations on your first publication!

May 2023      Prof. Kim received a grant from "2nd Government-led Medical Device Research and Development Project" 

Mar 2023      Sang Kyun Yoo's paper (one of the co-first authors of "Acute coronary event (ACE) prediction following breast radiotherapy by                                    features extracted from 3D CT, dose and cardiac structures" ) was accepted in Medical Physics. Congratulations on your  achievement!