1.Development and Application of Medical Imaging Analysis Platform Based on Radiomics and Machine Learning Technologies.
Yonggen ZHAO ; Zhu ZHU ; Zhuo YU ; Xiangfei CHAI ; Gang YU
Chinese Journal of Medical Instrumentation 2023;47(3):272-277
OBJECTIVE:
In order to solve the technical problems, clinical researchers face the process of medical imaging analysis such as data labeling, feature extraction and algorithm selection, a medical imaging oriented multi-disease research platform based on radiomics and machine learning technology was designed and constructed.
METHODS:
Five aspects including data acquisition, data management, data analysis, modeling and data management were considered. This platform provides comprehensive functions such as data retrieve and data annotation, image feature extraction and dimension reduction, machine learning model running, results validation, visual analysis and automatic generation of analysis reports, thus an integrated solution for the whole process of radiomics analysis has been generated.
RESULTS:
Clinical researchers can use this platform for the whole process of radiomics and machine learning analysis for medical images, and quickly produce research results.
CONCLUSIONS
This platform greatly shortens the time for medical image analysis research, decreasing the work difficulty of clinical researchers, as well as significantly promoting their working efficiency.
Machine Learning
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Diagnostic Imaging
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Algorithms
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Radiography
2.Research progress of deep learning in nuclear myocardial perfusion imaging
Hao SONG ; Zhifang WU ; Xiangfei CHAI ; Rui XI ; Hao GE ; Sijin LI
Chinese Journal of Nuclear Medicine and Molecular Imaging 2024;44(2):116-119
In recent years, artificial intelligence (AI) technology represented by deep learning (DL) has developed rapidly, and smart medical care has become one of the most important application areas of AI. As the most accurate noninvasive test to assess myocardial blood flow, myocardial perfusion imaging (MPI) has important clinical values. At present, the use of DL algorithms to establish learning models for MPI images is still in the research stage, and more external verification and iterative updates are needed before it can be widely used in real time clinical practice. In this article, the application of DL algorithms in MPI is comprehensively elaborated to provide a basis and direction for further research.