| Literature DB >> 35740190 |
Ali A Rabaan1,2,3, Saad Alhumaid4, Abbas Al Mutair5,6,7,8, Mohammed Garout9, Yem Abulhamayel10, Muhammad A Halwani11, Jeehan H Alestad12,13, Ali Al Bshabshe14, Tarek Sulaiman15, Meshal K AlFonaisan16, Tariq Almusawi17,18, Hawra Albayat19, Mohammed Alsaeed20, Mubarak Alfaresi21,22, Sultan Alotaibi23, Yousef N Alhashem24, Mohamad-Hani Temsah25, Urooj Ali26, Naveed Ahmed27.
Abstract
Artificial intelligence (AI) is a branch of science and engineering that focuses on the computational understanding of intelligent behavior. Many human professions, including clinical diagnosis and prognosis, are greatly useful from AI. Antimicrobial resistance (AMR) is among the most critical challenges facing Pakistan and the rest of the world. The rising incidence of AMR has become a significant issue, and authorities must take measures to combat the overuse and incorrect use of antibiotics in order to combat rising resistance rates. The widespread use of antibiotics in clinical practice has not only resulted in drug resistance but has also increased the threat of super-resistant bacteria emergence. As AMR rises, clinicians find it more difficult to treat many bacterial infections in a timely manner, and therapy becomes prohibitively costly for patients. To combat the rise in AMR rates, it is critical to implement an institutional antibiotic stewardship program that monitors correct antibiotic use, controls antibiotics, and generates antibiograms. Furthermore, these types of tools may aid in the treatment of patients in the event of a medical emergency in which a physician is unable to wait for bacterial culture results. AI's applications in healthcare might be unlimited, reducing the time it takes to discover new antimicrobial drugs, improving diagnostic and treatment accuracy, and lowering expenses at the same time. The majority of suggested AI solutions for AMR are meant to supplement rather than replace a doctor's prescription or opinion, but rather to serve as a valuable tool for making their work easier. When it comes to infectious diseases, AI has the potential to be a game-changer in the battle against antibiotic resistance. Finally, when selecting antibiotic therapy for infections, data from local antibiotic stewardship programs are critical to ensuring that these bacteria are treated quickly and effectively. Furthermore, organizations such as the World Health Organization (WHO) have underlined the necessity of selecting the appropriate antibiotic and treating for the shortest time feasible to minimize the spread of resistant and invasive resistant bacterial strains.Entities:
Keywords: AMR; advances; antibiotic stewardship; better diagnosis; diagnostic microbiology; global platform
Year: 2022 PMID: 35740190 PMCID: PMC9220767 DOI: 10.3390/antibiotics11060784
Source DB: PubMed Journal: Antibiotics (Basel) ISSN: 2079-6382
Figure 1Schematic diagram of dataflow integration.
AI application strategies against AMR.
| AI Applications for AMR | Concepts | Advantages | Drawbacks |
|---|---|---|---|
| AI health industry and antibiotics | |||
| Antimicrobial peptides | A natural class of small host defense peptides, found in all classes of biological species. |
Low chances of AMR development Multiple action mechanisms Ease of synthesis with machine/deep learning |
Highly toxic Expensive in large-scale production Unpreferable widespread use The onset of allergic reactions |
| New antibiotics | Discovery of new and structurally different antibiotics from the ones already known using AI. |
Broad-spectrum and targeted bioactivity Reduced production time Cost-effective |
Challenge of training libraries according to required pharmacokinetic properties of drugs Challenge of most appropriate approach selection, minimizing toxicity, and lead compound discovery |
| AI, infectious diseases, and pediatric practices | |||
| Appropriate antibiotic prescription | Appropriate therapy selection, dose, and correct administration route |
Automatic support for decisions and review of antimicrobial prescriptions Automatic feedback input and relevant improvement Directed operation |
Biasness in operation Little labor Need for health funds |
| Prediction of antibiotic resistance | ML techniques to predict early AMR or the probability of a microbial agent becoming resistant |
Genomic exploitation to predict the phenotype Ability to support clinician’s decision |
Lack of genotypes and genome data in NCBI or other databases Challenge of large data integration |
| The severity of infection prediction | Machine/deep learning tools for infectious pathology recognition and appropriate management |
The efficiency of distinguishing infectious and noninfectious diseases Decision support provision Mortality reduction |
Challenge of accurate data collection Insufficient relevant laboratory information |
Figure 2Gold standards method for AST (disc diffusion) v/s automation methods.
Figure 3Deep antibiotic-resistant gene-sequencing model.
Figure 4ML-based sepsis model: (a) during the evaluation phase of COMPOSER; (b) input data to obtain a risk factor for sepsis prediction; (c) a deployment scheme without the use of conformal prediction (adopted from Shashikumar et al. (2021) [63]).
Advantages and disadvantages of commonly used AI algorithms.
| Algorithm | Description | Advantages | Disadvantages | Learning Speed | Interpretability |
|---|---|---|---|---|---|
| NB | Based on the Bayes theorem, a family of algorithms working on the principle of independent classification of each pair of features | Easily implemented, fast, suitable for missing value datasets | Independent features only | 5 | 2 |
| RF | Solely based on decision trees’ predictions; takes the mean value of various trees’ outputs; precision increases with increasing no. of trees | Effective for large datasets, multi-feature handling | Insensitive to outlier information | 2 | 3 |
| ANN | Imitates the working of nerve cells in humans; makes independent judgments on new input based on learning | Multiple layer perceptron, higher accuracy with model depth | Speed of learning lowers with increasing model depth | 1 | 1 |
| SVM | Supervised algorithm for regression & classification; locates a hyperplane to classify data points in the N-dimensional space | Utility of kernel functions | Slow, requires specification of multiple parameters | 1 | 1 |
| DT | Prediction based on targeted variable; leaf nodes equal class label, internal node equals attributes | Easily interpreted, work with missing values in the dataset | May not work on missing data if the tree is too complex | 4 | 5 |
The learning speed and interpretability increase from 1 to 5, with 5 being the best.