Deep Learning in Computer-Aided Diagnosis and Treatment of Tumors: A
Survey
- URL: http://arxiv.org/abs/2011.00940v1
- Date: Mon, 2 Nov 2020 12:42:19 GMT
- Title: Deep Learning in Computer-Aided Diagnosis and Treatment of Tumors: A
Survey
- Authors: Dan Zhao, Guizhi Xu, Zhenghua XU, Thomas Lukasiewicz, Minmin Xue,
Zhigang Fu
- Abstract summary: Computer-Aided Diagnosis and Treatment of Tumors is a hot topic of deep learning in recent years.
This survey presents the applications of deep learning in the Computer-Aided Diagnosis and Treatment of Tumors.
- Score: 42.16618852663992
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Computer-Aided Diagnosis and Treatment of Tumors is a hot topic of deep
learning in recent years, which constitutes a series of medical tasks, such as
detection of tumor markers, the outline of tumor leisures, subtypes and stages
of tumors, prediction of therapeutic effect, and drug development. Meanwhile,
there are some deep learning models with precise positioning and excellent
performance produced in mainstream task scenarios. Thus follow to introduce
deep learning methods from task-orient, mainly focus on the improvements for
medical tasks. Then to summarize the recent progress in four stages of tumor
diagnosis and treatment, which named In-Vitro Diagnosis (IVD), Imaging
Diagnosis (ID), Pathological Diagnosis (PD), and Treatment Planning (TP).
According to the specific data types and medical tasks of each stage, we
present the applications of deep learning in the Computer-Aided Diagnosis and
Treatment of Tumors and analyzing the excellent works therein. This survey
concludes by discussing research issues and suggesting challenges for future
improvement.
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