Deep Learning for Medical Image-Based Cancer Diagnosis

被引:53
作者
Jiang, Xiaoyan [1 ]
Hu, Zuojin [1 ]
Wang, Shuihua [2 ]
Zhang, Yudong [2 ]
机构
[1] Nanjing Normal Univ Special Educ, Sch Math & Informat Sci, Nanjing 210038, Peoples R China
[2] Univ Leicester, Sch Comp & Math Sci, Leicester LE1 7RH, England
基金
英国生物技术与生命科学研究理事会; 英国医学研究理事会; 英国科研创新办公室;
关键词
cancer diagnosis; artificial intelligence; medical image; deep neural network; deep learning; overfitting prevention technique; CONVOLUTIONAL NEURAL-NETWORK; POSITRON-EMISSION-TOMOGRAPHY; CELL LUNG-CANCER; BREAST-CANCER; COMPUTED-TOMOGRAPHY; U-NET; BOLTZMANN MACHINE; PROSTATE-CANCER; CERVICAL-CANCER; BLADDER-CANCER;
D O I
10.3390/cancers15143608
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Simple Summary Deep learning has succeeded greatly in medical image-based cancer diagnosis. To help readers better understand the current research status and ideas, this article provides a detailed overview of the working mechanisms and use cases of commonly used radiological imaging and histopathology, the basic architecture of deep learning, classical pretrained models, common methods to overcome overfitting, and the application of deep learning in medical image-based cancer diagnosis. Finally, the data, label, model, and radiomics were discussed specifically and the current challenges and future research hotspots were discussed and analyzed. (1) Background: The application of deep learning technology to realize cancer diagnosis based on medical images is one of the research hotspots in the field of artificial intelligence and computer vision. Due to the rapid development of deep learning methods, cancer diagnosis requires very high accuracy and timeliness as well as the inherent particularity and complexity of medical imaging. A comprehensive review of relevant studies is necessary to help readers better understand the current research status and ideas. (2) Methods: Five radiological images, including X-ray, ultrasound (US), computed tomography (CT), magnetic resonance imaging (MRI), positron emission computed tomography (PET), and histopathological images, are reviewed in this paper. The basic architecture of deep learning and classical pretrained models are comprehensively reviewed. In particular, advanced neural networks emerging in recent years, including transfer learning, ensemble learning (EL), graph neural network, and vision transformer (ViT), are introduced. Five overfitting prevention methods are summarized: batch normalization, dropout, weight initialization, and data augmentation. The application of deep learning technology in medical image-based cancer analysis is sorted out. (3) Results: Deep learning has achieved great success in medical image-based cancer diagnosis, showing good results in image classification, image reconstruction, image detection, image segmentation, image registration, and image synthesis. However, the lack of high-quality labeled datasets limits the role of deep learning and faces challenges in rare cancer diagnosis, multi-modal image fusion, model explainability, and generalization. (4) Conclusions: There is a need for more public standard databases for cancer. The pre-training model based on deep neural networks has the potential to be improved, and special attention should be paid to the research of multimodal data fusion and supervised paradigm. Technologies such as ViT, ensemble learning, and few-shot learning will bring surprises to cancer diagnosis based on medical images.
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页数:72
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