Author/Authors :
Xue, Yong Guangzhou Panyu Central Hospital - Guangzhou, China , Chen, Shihui School of Biomedical Engineering - Health Science Centre - Shenzhen University - Shenzhen, China , Qin, Jing School of Nursing - The Hong Kong Polytechnic University - Hung Hom, Hong Kong , Liu, Yong Southern Medical University Shenzhen Hospital - Shenzhen, China , Huang, Bingsheng School of Biomedical Engineering - Health Science Centre - Shenzhen University - Shenzhen, China , Chen, Hanwei Guangzhou Panyu Central Hospital - Guangzhou, China
Abstract :
Molecular imaging enables the visualization and quantitative analysis of the alterations of biological procedures at molecular and/or
cellular level, which is of great significance for early detection of cancer. In recent years, deep leaning has been widely used in
medical imaging analysis, as it overcomes the limitations of visual assessment and traditional machine learning techniques by
extracting hierarchical features with powerful representation capability. Research on cancer molecular images using deep learning
techniques is also increasing dynamically. Hence, in this paper, we review the applications of deep learning in molecular imaging
in terms of tumor lesion segmentation, tumor classification, and survival prediction. We also outline some future directions in
which researchers may develop more powerful deep learning models for better performance in the applications in cancer molecular
imaging.
Keywords :
Deep , Molecular , CT , MR