Medical Image Classifications Using Convolutional Neural Networks: A Survey of Current Methods and Statistical Modeling of the Literature

被引:15
作者
Mohammed, Foziya Ahmed [1 ,2 ,3 ]
Tune, Kula Kekeba [1 ,2 ]
Assefa, Beakal Gizachew [4 ]
Jett, Marti [5 ]
Muhie, Seid [6 ,7 ]
机构
[1] Addis Ababa Sci & Technol Univ, Coll Elect & Mech Engn, Dept Software Engn, Addis Ababa 16417, Ethiopia
[2] Addis Ababa Sci & Technol Univ, Ctr Excellence HPC & Big Data Analyt, Addis Ababa 16417, Ethiopia
[3] Wolkite Univ, Coll Comp & Informat, Dept Informat Technol, POB 07, Wolkite, Ethiopia
[4] Addis Ababa Univ, Addis Ababa Inst Technol, Sch Informat Technol & Engn, POB 1000, Addis Ababa, Ethiopia
[5] Walter Reed Army Inst Res, Head Quarter, Silver Spring, MD 20910 USA
[6] Walter Reed Army Inst Res, Med Readiness Syst Biol, Silver Spring, MD 20910 USA
[7] Geneva Fdn, Silver Spring, MD 20910 USA
关键词
medical imaging; convolutional neural network models; classification; hyperparameter tuning; frameworks; preprocessing; performance metrics; ensemble; activation function; CNN; SEGMENTATION; OPTIMIZATION; TRANSFORMER; ENSEMBLE; MRI;
D O I
10.3390/make6010033
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In this review, we compiled convolutional neural network (CNN) methods which have the potential to automate the manual, costly and error-prone processing of medical images. We attempted to provide a thorough survey of improved architectures, popular frameworks, activation functions, ensemble techniques, hyperparameter optimizations, performance metrics, relevant datasets and data preprocessing strategies that can be used to design robust CNN models. We also used machine learning algorithms for the statistical modeling of the current literature to uncover latent topics, method gaps, prevalent themes and potential future advancements. The statistical modeling results indicate a temporal shift in favor of improved CNN designs, such as a shift from the use of a CNN architecture to a CNN-transformer hybrid. The insights from statistical modeling point that the surge of CNN practitioners into the medical imaging field, partly driven by the COVID-19 challenge, catalyzed the use of CNN methods for detecting and diagnosing pathological conditions. This phenomenon likely contributed to the sharp increase in the number of publications on the use of CNNs for medical imaging, both during and after the pandemic. Overall, the existing literature has certain gaps in scope with respect to the design and optimization of CNN architectures and methods specifically for medical imaging. Additionally, there is a lack of post hoc explainability of CNN models and slow progress in adopting CNNs for low-resource medical imaging. This review ends with a list of open research questions that have been identified through statistical modeling and recommendations that can potentially help set up more robust, improved and reproducible CNN experiments for medical imaging.
引用
收藏
页码:699 / 735
页数:37
相关论文
共 147 条
[41]   Medical image-based detection of COVID-19 using Deep Convolution Neural Networks [J].
Gaur, Loveleen ;
Bhatia, Ujwal ;
Jhanjhi, N. Z. ;
Muhammad, Ghulam ;
Masud, Mehedi .
MULTIMEDIA SYSTEMS, 2023, 29 (03) :1729-1738
[42]   Efficient Hyperparameter Tuning with Grid Search for Text Categorization using kNN Approach with BM25 Similarity [J].
Ghawi, Raji ;
Pfeffer, Juergen .
OPEN COMPUTER SCIENCE, 2019, 9 (01) :160-180
[43]  
Gowdra N, 2020, IEEE IND ELEC, P465, DOI [10.1109/iecon43393.2020.9255147, 10.1109/IECON43393.2020.9255147]
[44]  
Gu B, 2021, Arxiv, DOI [arXiv:2102.09026, DOI 10.48550/ARXIV.2102.09026]
[45]  
Guo HF, 2017, Arxiv, DOI arXiv:1703.04247
[46]   A Survey on Vision Transformer [J].
Han, Kai ;
Wang, Yunhe ;
Chen, Hanting ;
Chen, Xinghao ;
Guo, Jianyuan ;
Liu, Zhenhua ;
Tang, Yehui ;
Xiao, An ;
Xu, Chunjing ;
Xu, Yixing ;
Yang, Zhaohui ;
Zhang, Yiman ;
Tao, Dacheng .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2023, 45 (01) :87-110
[47]   DM-CNN: Dynamic Multi-scale Convolutional Neural Network with uncertainty quantification for medical image classification [J].
Han, Qi ;
Qian, Xin ;
Xu, Hongxiang ;
Wu, Kepeng ;
Meng, Lun ;
Qiu, Zicheng ;
Weng, Tengfei ;
Zhou, Baoping ;
Gao, Xianqiang .
COMPUTERS IN BIOLOGY AND MEDICINE, 2024, 168
[48]   NeuroNet19: an explainable deep neural network model for the classification of brain tumors using magnetic resonance imaging data [J].
Haque, Rezuana ;
Hassan, Md. Mehedi ;
Bairagi, Anupam Kumar ;
Islam, Sheikh Mohammed Shariful .
SCIENTIFIC REPORTS, 2024, 14 (01)
[49]   Feature Interpretation Using Generative Adversarial Networks (FIGAN): A Framework for Visualizing a CNN's Learned Features [J].
Hasenstab, Kyle A. ;
Huynh, Justin ;
Masoudi, Samira ;
Cunha, Guilherme M. ;
Pazzani, Michael ;
Hsiao, Albert .
IEEE ACCESS, 2023, 11 :5144-5160
[50]   Swin UNETR: Swin Transformers for Semantic Segmentation of Brain Tumors in MRI Images [J].
Hatamizadeh, Ali ;
Nath, Vishwesh ;
Tang, Yucheng ;
Yang, Dong ;
Roth, Holger R. ;
Xu, Daguang .
BRAINLESION: GLIOMA, MULTIPLE SCLEROSIS, STROKE AND TRAUMATIC BRAIN INJURIES, BRAINLES 2021, PT I, 2022, 12962 :272-284