Submitted:
30 June 2025
Posted:
01 July 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Review Design
2.1. Search Strategy
2.2. Search Selection
3. Results
3.1. Coronavirus Disease 2019 (COVID-19)
3.2. Influenza (Flu)
3.3. Human Immunodeficiency Virus (HIV) / Immunodeficiency Syndrome (AIDS)
3.4. Tuberculosis
| Paper | Year | ML | DL | Algorithm | Complexity | Scalability |
|---|---|---|---|---|---|---|
| [48] | 1990 | ✓ | ✗ | ANN | Low | Low |
| [50] | 1997 | ✓ | ✗ | DT, RF | Low–Med | Medium |
| [49] | 1999 | ✓ | ✗ | GRNN | Low | Low |
| [51] | 2011 | ✓ | ✗ | Feed-Forward ANN | Medium | Medium |
| [52] | 2017 | ✗ | ✓ | CNN | High | High |
| [53] | 2018 | ✗ | ✓ | Deep NN | High | High |
| [54] | 2022 | ✓ | ✗ | KNN, RF, NB, LDA, SVM | Medium | Medium |
3.5. Hepatitis
| Paper | Year | ML | DL | Algorithm | Complexity | Scalability |
|---|---|---|---|---|---|---|
| [62] | 2020 | ✗ | ✓ | LSTM | High | High |
| [64] | 2020 | ✓ | ✓ | ARIMA, SVM, LSTM | Medium | High |
| [60] | 2022 | ✓ | ✗ | SVM, SMOTE | Medium | Medium |
| [63] | 2022 | ✗ | ✓ | MLP | Medium | High |
| [61] | 2023 | ✓ | ✗ | SVM, RF, Naive Bayes, KNN | Medium | High |
| [58] | 2024 | ✓ | ✗ | Predictive Analytics, NLP, ML | High | High |
| [59] | 2024 | ✓ | ✗ | SVM, DT, LR, RF | Medium | Medium |
4. Strength and Limitations
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
- Organization, W.H.; et al. Global report on infection prevention and control; World Health Organization: Geneva, 2022. [Google Scholar]
- Baker, R.E.; Mahmud, A.S.; Miller, I.F.; Rajeev, M.; Rasambainarivo, F.; Rice, B.L.; Takahashi, S.; Tatem, A.J.; Wagner, C.E.; Wang, L.F.; et al. Infectious disease in an era of global change. Nature reviews microbiology 2022, 20, 193–205. [Google Scholar] [CrossRef]
- Khabbaz, R.F.; Moseley, R.R.; Steiner, R.J.; Levitt, A.M.; Bell, B.P. Challenges of infectious diseases in the USA. The Lancet 2014, 384, 53–63. [Google Scholar] [CrossRef]
- Santangelo, O.E.; Gentile, V.; Pizzo, S.; Giordano, D.; Cedrone, F. Machine learning and prediction of infectious diseases: a systematic review. Machine Learning and Knowledge Extraction 2023, 5, 175–198. [Google Scholar] [CrossRef]
- Liu, M.; Liu, Y.; Liu, J. Machine learning for infectious disease risk prediction: a survey. ACM Computing Surveys 2023. [Google Scholar] [CrossRef]
- Mishra, S.; Kumar, R.; Tiwari, S.K.; Ranjan, P. Machine learning approaches in the diagnosis of infectious diseases: a review. Bulletin of Electrical Engineering and Informatics 2022, 11, 3509–3520. [Google Scholar] [CrossRef]
- Farooq, M.; Hafeez, A. Covid-resnet: A deep learning framework for screening of covid19 from radiographs. arXiv preprint arXiv:2003.14395 2020.
- Islam, M.Z.; Islam, M.M.; Asraf, A. A combined deep CNN-LSTM network for the detection of novel coronavirus (COVID-19) using X-ray images. Informatics in medicine unlocked 2020, 20, 100412. [Google Scholar] [CrossRef]
- Pranolo, A.; Mao, Y.; et al. CAE-COVIDX: automatic covid-19 disease detection based on x-ray images using enhanced deep convolutional and autoencoder. International Journal of Advances in Intelligent Informatics 2021, 7. [Google Scholar]
- Mehta, T.; Mehendale, N. Classification of X-ray images into COVID-19, pneumonia, and TB using cGAN and fine-tuned deep transfer learning models. Research on Biomedical Engineering 2021, 37, 803–813. [Google Scholar] [CrossRef]
- Kalane, P.; Patil, S.; Patil, B.; Sharma, D.P. Automatic detection of COVID-19 disease using U-Net architecture based fully convolutional network. Biomedical Signal Processing and Control 2021, 67, 102518. [Google Scholar] [CrossRef]
- Agarwal, K.; Choudhury, S.; Tipirneni, S.; Mukherjee, P.; Ham, C.; Tamang, S.; Baker, M.; Tang, S.; Kocaman, V.; Gevaert, O.; et al. Preparing for the next pandemic via transfer learning from existing diseases with hierarchical multi-modal BERT: a study on COVID-19 outcome prediction. Scientific reports 2022, 12, 10748. [Google Scholar] [CrossRef]
- Adams, D.A. Summary of Notifiable Infectious Diseases and Conditions — United States, 2014. MMWR. Morbidity and Mortality Weekly Report 2016, 63. [Google Scholar] [CrossRef]
- World Health Organization. Coronavirus disease (COVID-19), 2020. Accessed: February 7, 2025.
- Rothan, H.A.; Byrareddy, S.N. The epidemiology and pathogenesis of coronavirus disease (COVID-19) outbreak. Journal of autoimmunity 2020, 109, 102433. [Google Scholar] [CrossRef]
- World Health Organization. WHO Coronavirus (COVID-19) Dashboard: Death Toll, 2025. Accessed: February 7, 2025.
- Mathieu, E.; Ritchie, H.; Rodés-Guirao, L.; Appel, C.; Gavrilov, D.; Giattino, C.; Hasell, J.; Macdonald, B.; Dattani, S.; Beltekian, D.; et al. COVID-19 Pandemic. Our World in Data 2020. https://ourworldindata.org/coronavirus.
- Santosh, K. COVID-19 prediction models and unexploited data. Journal of medical systems 2020, 44, 170. [Google Scholar] [CrossRef]
- Moulaei, K.; Shanbehzadeh, M.; Mohammadi-Taghiabad, Z.; Kazemi-Arpanahi, H. Comparing machine learning algorithms for predicting COVID-19 mortality. BMC medical informatics and decision making 2022, 22, 2. [Google Scholar] [CrossRef]
- Arpaci, I.; Huang, S.; Al-Emran, M.; Al-Kabi, M.N.; Peng, M. Predicting the COVID-19 infection with fourteen clinical features using machine learning classification algorithms. Multimedia Tools and Applications 2021, 80, 11943–11957. [Google Scholar] [CrossRef]
- Ardabili, S.F.; Mosavi, A.; Ghamisi, P.; Ferdinand, F.; Varkonyi-Koczy, A.R.; Reuter, U.; Rabczuk, T.; Atkinson, P.M. Covid-19 outbreak prediction with machine learning. Algorithms 2020, 13, 249. [Google Scholar] [CrossRef]
- Pinter, G.; Felde, I.; Mosavi, A.; Ghamisi, P.; Gloaguen, R. COVID-19 pandemic prediction for Hungary; a hybrid machine learning approach. Mathematics 2020, 8, 890. [Google Scholar] [CrossRef]
- Dairi, A.; Harrou, F.; Zeroual, A.; Hittawe, M.M.; Sun, Y. Comparative study of machine learning methods for COVID-19 transmission forecasting. Journal of biomedical informatics 2021, 118, 103791. [Google Scholar] [CrossRef]
- World Health Organization. Influenza (Seasonal), 2023. Accessed: February 7, 2025.
- Centers for Disease Control and Prevention. Influenza (Flu) Burden in the U.S., 2023. Accessed: February 7, 2025.
- Alessa, A.; Faezipour, M.; et al. Preliminary flu outbreak prediction using twitter posts classification and linear regression with historical centers for disease control and prevention reports: Prediction framework study. JMIR public health and surveillance 2019, 5, e12383. [Google Scholar] [CrossRef]
- Khan, M.A.; Abidi, W.U.H.; Al Ghamdi, M.A.; Almotiri, S.H.; Saqib, S.; Alyas, T.; Khan, K.M.; Mahmood, N. Forecast the influenza pandemic using machine learning. Computers, Materials and Continua 2020, 66, 331–340. [Google Scholar] [CrossRef]
- Zhang, J.; Nawata, K. A comparative study on predicting influenza outbreaks. Bioscience trends 2017, 11, 533–541. [Google Scholar] [CrossRef]
- Allen, C.; Tsou, M.H.; Aslam, A.; Nagel, A.; Gawron, J.M. Applying GIS and machine learning methods to Twitter data for multiscale surveillance of influenza. PloS one 2016, 11, e0157734. [Google Scholar] [CrossRef]
- Amin, S.; Uddin, M.I.; AlSaeed, D.H.; Khan, A.; Adnan, M. Early detection of seasonal outbreaks from twitter data using machine learning approaches. Complexity 2021, 2021, 5520366. [Google Scholar] [CrossRef]
- World Health Organization. Influenza A (H1N1) outbreak, 2009. Accessed: February 7, 2025.
- Inampudi, S.; Johnson, G.; Jhaveri, J.; Niranjan, S.; Chaurasia, K.; Dixit, M. Machine learning based prediction of h1n1 and seasonal flu vaccination. In Proceedings of the Advanced Computing: 10th International Conference, IACC 2020, Panaji, Goa, India, December 5–6, 2020, Revised Selected Papers, Part I 10. Springer, 2021, pp. 139–150.
- Ayachit, S.S.; Kumar, T.; Deshpande, S.; Sharma, N.; Chaurasia, K.; Dixit, M. Predicting h1n1 and seasonal flu: Vaccine cases using ensemble learning approach. In Proceedings of the 2020 2nd International Conference on Advances in Computing, Communication Control and Networking (ICACCCN). IEEE, 2020, pp. 172–176.
- World Health Organization. HIV/AIDS 2024. Accessed: February 5, 2025.
- World Health Organization. HIV/AIDS Key Facts, 2024. Accessed: February 11, 2025.
- Centers for Disease Control and Prevention. HIV Diagnoses, Deaths, and Prevalence, 2023. Accessed: , 2025. 11 February.
- Wang, B.; Liu, F.; Deveaux, L.; Ash, A.; Gosh, S.; Li, X.; Rundensteiner, E.; Cottrell, L.; Adderley, R.; Stanton, B. Adolescent HIV-related behavioural prediction using machine learning: a foundation for precision HIV prevention. Aids 2021, 35, S75–S84. [Google Scholar] [CrossRef]
- Pan, Y.; Liu, H.; Metsch, L.R.; Feaster, D.J. Factors associated with HIV testing among participants from substance use disorder treatment programs in the US: A machine learning approach. AIDS and Behavior 2017, 21, 534–546. [Google Scholar] [CrossRef]
- Nisa, S.U.; Mahmood, A.; Ujager, F.S.; Malik, M. HIV/AIDS predictive model using random forest based on socio-demographical, biological and behavioral data. Egyptian Informatics Journal 2023, 24, 107–115. [Google Scholar] [CrossRef]
- Centers for Disease Control and Prevention. HIV Surveillance Report, 2020 2022. Accessed: 2025-02-11.
- Bao, Y.; Medland, N.A.; Fairley, C.K.; Wu, J.; Shang, X.; Chow, E.P.; Xu, X.; Ge, Z.; Zhuang, X.; Zhang, L. Predicting the diagnosis of HIV and sexually transmitted infections among men who have sex with men using machine learning approaches. Journal of Infection 2021, 82, 48–59. [Google Scholar] [CrossRef]
- Chingombe, I.; Dzinamarira, T.; Cuadros, D.; Mapingure, M.P.; Mbunge, E.; Chaputsira, S.; Madziva, R.; Chiurunge, P.; Samba, C.; Herrera, H.; et al. Predicting HIV status among men who have sex with men in Bulawayo & Harare, Zimbabwe using bio-behavioural data, recurrent neural networks, and machine learning techniques. Tropical Medicine and Infectious Disease 2022, 7, 231. [Google Scholar]
- Turbé, V.; Herbst, C.; Mngomezulu, T.; Meshkinfamfard, S.; Dlamini, N.; Mhlongo, T.; Smit, T.; Cherepanova, V.; Shimada, K.; Budd, J.; et al. Deep learning of HIV field-based rapid tests. Nature medicine 2021, 27, 1165–1170. [Google Scholar] [CrossRef]
- Wang, G.; Wei, W.; Jiang, J.; Ning, C.; Chen, H.; Huang, J.; Liang, B.; Zang, N.; Liao, Y.; Chen, R.; et al. Application of a long short-term memory neural network: a burgeoning method of deep learning in forecasting HIV incidence in Guangxi, China. Epidemiology & Infection 2019, 147, e194. [Google Scholar]
- Bhirud, P.; Joshi, A.; Hirani, N.; Chowdhary, A. Rapid laboratory diagnosis of pulmonary tuberculosis. The International Journal of Mycobacteriology 2017, 6, 296–301. [Google Scholar] [CrossRef]
- Singh, M.; Pujar, G.V.; Kumar, S.A.; Bhagyalalitha, M.; Akshatha, H.S.; Abuhaija, B.; Alsoud, A.R.; Abualigah, L.; Beeraka, N.M.; Gandomi, A.H. Evolution of machine learning in tuberculosis diagnosis: a review of deep learning-based medical applications. Electronics 2022, 11, 2634. [Google Scholar] [CrossRef]
- Rabehi, A.; Kumar, P. Improving tuberculosis diagnosis and forecasting through machine learning techniques: A systematic review. Metaheuristic Optim. Rev. 2024, 1, 35–44. [Google Scholar]
- Asada, N.; Doi, K.; MacMahon, H.; Montner, S.; Giger, M.; Abe, C.; Wu, Y. Potential usefulness of an artificial neural network for differential diagnosis of interstitial lung diseases: pilot study. Radiology 1990, 177, 857–860. [Google Scholar] [CrossRef]
- El-Solh, A.A.; Hsiao, C.B.; Goodnough, S.; Serghani, J.; Grant, B.J. Predicting active pulmonary tuberculosis using an artificial neural network. Chest 1999, 116, 968–973. [Google Scholar] [CrossRef]
- El-Solh, A.; Mylotte, J.; Sherif, S.; Serghani, J.; Grant, B. Validity of a decision tree for predicting active pulmonary tuberculosis. American journal of respiratory and critical care medicine 1997, 155, 1711–1716. [Google Scholar] [CrossRef]
- Elveren, E.; Yumuşak, N. Tuberculosis disease diagnosis using artificial neural network trained with genetic algorithm. Journal of medical systems 2011, 35, 329–332. [Google Scholar] [CrossRef]
- Hooda, R.; Sofat, S.; Kaur, S.; Mittal, A.; Meriaudeau, F. Deep-learning: A potential method for tuberculosis detection using chest radiography. In Proceedings of the 2017 IEEE International Conference on Signal and Image Processing Applications (ICSIPA); 2017; pp. 497–502. [Google Scholar] [CrossRef]
- Kant, S.; Srivastava, M.M. Towards Automated Tuberculosis detection using Deep Learning. In Proceedings of the 2018 IEEE Symposium Series on Computational Intelligence (SSCI); 2018; pp. 1250–1253. [Google Scholar] [CrossRef]
- Hrizi, O.; Gasmi, K.; Ben Ltaifa, I.; Alshammari, H.; Karamti, H.; Krichen, M.; Ben Ammar, L.; Mahmood, M.A. Tuberculosis disease diagnosis based on an optimized machine learning model. Journal of Healthcare Engineering 2022, 2022, 8950243. [Google Scholar] [CrossRef]
- Hansun, S.; Argha, A.; Liaw, S.T.; Celler, B.G.; Marks, G.B. Machine and deep learning for tuberculosis detection on chest x-rays: systematic literature review. Journal of medical Internet research 2023, 25, e43154. [Google Scholar] [CrossRef]
- Ramrakhiani, N.S.; Chen, V.L.; Le, M.; Yeo, Y.H.; Barnett, S.D.; Waljee, A.K.; Zhu, J.; Nguyen, M.H. Optimizing hepatitis B virus screening in the United States using a simple demographics-based model. Hepatology 2022, 75, 430–437. [Google Scholar] [CrossRef]
- Saleem, H. Hepatitis Diagnosis: A Comprehensive Review of Machine Learning Classification Algorithms. The Indonesian Journal of Computer Science 2024, 13. [Google Scholar] [CrossRef]
- Ali, G.; Mijwil, M.M.; Adamopoulos, I.; Buruga, B.A.; Gök, M.; Sallam, M. Harnessing the potential of artificial intelligence in managing viral hepatitis. Mesopotamian Journal of Big Data 2024, 2024, 128–163. [Google Scholar] [CrossRef]
- Bharathi, P.T.; Bindu, S.N.; Deepthi, S.G.; Gunakeerthi, H.U.; Harshitha, K.U. AI based solution for Predicting Hepatitis C Virus from Blood Samples. In Proceedings of the 2024 International Conference on Smart Systems for applications in Electrical Sciences (ICSSES), 2024, pp. 1–6. [CrossRef]
- Yağanoğlu, M. Hepatitis C virus data analysis and prediction using machine learning. Data & Knowledge Engineering 2022, 142, 102087. [Google Scholar] [CrossRef]
- Harabor, V.; Mogos, R.; Nechita, A.; Adam, A.M.; Adam, G.; Melinte-Popescu, A.S.; Melinte-Popescu, M.; Stuparu-Cretu, M.; Vasilache, I.A.; Mihalceanu, E.; et al. Machine learning approaches for the prediction of hepatitis B and C seropositivity. International journal of environmental research and public health 2023, 20, 2380. [Google Scholar] [CrossRef]
- Wang, X.; Tian, S.; Yu, L.; Lv, X.; Zhang, Z. Rapid screening of hepatitis B using Raman spectroscopy and long short-term memory neural network. Lasers in medical science 2020, 35, 1791–1799. [Google Scholar] [CrossRef]
- Chen, L.; Ji, P.; Ma, Y. Machine Learning Model for Hepatitis C Diagnosis Customized to Each Patient. IEEE Access 2022, 10, 106655–106672. [Google Scholar] [CrossRef]
- Guo, Y.; Feng, Y.; Qu, F.; Zhang, L.; Yan, B.; Lv, J. Prediction of hepatitis E using machine learning models. Plos one 2020, 15, e0237750. [Google Scholar] [CrossRef]
| Paper | Year | ML | DL | Algorithm | Complexity | Scalability |
|---|---|---|---|---|---|---|
| [18] | 2020 | ✓ | ✗ | SEIR, SIR, ABM, CF | Low–Med | High |
| [21] | 2020 | ✓ | ✗ | MLP, ANFIS | Medium | Medium |
| [22] | 2020 | ✓ | ✗ | MLP-ICA, ANFIS | Med–High | Medium |
| [20] | 2021 | ✓ | ✗ | BayesNet, IBk, J48 | Low–Med | Medium |
| [23] | 2021 | ✓ | ✓ | LSTM-CNN, GAN-GRU | High | High |
| [19] | 2022 | ✓ | ✗ | J48, XGBoost, kNN, RF | Medium | Med–High |
| Paper | Year | ML | DL | Algorithm | Complexity | Scalability |
|---|---|---|---|---|---|---|
| [29] | 2016 | ✓ | ✗ | SVM, GIS | Medium | Medium |
| [28] | 2017 | ✗ | ✓ | LSTM | High | Medium |
| [26] | 2019 | ✓ | ✗ | FastText, LR, SVM | Medium | Medium |
| [33] | 2020 | ✓ | ✗ | CatBoost, Ensemble | Medium | High |
| [27] | 2020 | ✗ | ✓ | FFNN | Medium | Medium |
| [30] | 2021 | ✓ | ✗ | RF, SVM, NB | Medium | High |
| [32] | 2021 | ✓ | ✓ | SVM, ANN | Medium | Medium |
| Paper | Year | ML | DL | Algorithm | Complexity | Scalability |
|---|---|---|---|---|---|---|
| [38] | 2017 | ✓ | ✗ | RF | Low–Med | Medium |
| [44] | 2019 | ✗ | ✓ | LSTM, ARIMA, GRNN | High | Medium |
| [43] | 2021 | ✓ | ✓ | SVM, CNN | High | High |
| [37] | 2021 | ✓ | ✗ | SVM, RF | Medium | Medium |
| [41] | 2021 | ✓ | ✗ | GBM | Medium | Medium |
| [42] | 2022 | ✓ | ✓ | Bagging, RNN | Medium | Medium |
| [39] | 2023 | ✓ | ✗ | RF, SMOTE | Medium | Medium |
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