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题目(Title):
【SIST】Machine Learning with Scarce Data: Ejection Fraction Prediction Using PLAX View
主讲人(Speaker):
高致远 Zhiyuan (Jeffrey) Gao
开始时间(Start Time):
2026-01-04 14:00
结束时间(End Time):
2026-01-04 16:00
报告地点(Place):
信息学院1A200
主办单位(Organization):
信息科学与技术学院
协办单位(Co-organizer):
简介(Brief Introduction):
We developed a machine learning model to predict left ventricular ejection fraction (LVEF/EF) from parasternal long-axis (PLAX) echocardiographic videos. Because public datasets with labeled PLAX videos are virtually non-existent, our work focuses on an innovative data generation strategy to overcome this scarcity. By leveraging a time-based correlation between clinical notes and echocardiographic videos, combined with fine-tuning view classifiers and proxy labeling, we effectively created a large labeled PLAX dataset and achieved a mean absolute error (MAE) of 6.86%. Given that Apical four-chamber methods, the clinical standard, report MAE values of 6%-7%, our results demonstrate that EF estimation from PLAX views is both feasible and clinically relevant. This surpasses the performance of existing methods and provides a clinically useful solution for situations where apical views may not be feasible.
The graduate student life in Caltech and abroad application will be covered in the talk !
Bio:Bachelor at ShanghaiTech University SIST, 2017-2021
Visiting Student at UC Berkeley 2019/08-2020/06
Master at Caltech EE, 2021-2023
PhD student at Caltech AI, 2025-present
The graduate student life in Caltech and abroad application will be covered in the talk !
Bio:Bachelor at ShanghaiTech University SIST, 2017-2021
Visiting Student at UC Berkeley 2019/08-2020/06
Master at Caltech EE, 2021-2023
PhD student at Caltech AI, 2025-present

