| Literature DB >> 34069606 |
Madjid Soltani1,2,3,4,5, Farshad Moradi Kashkooli1, Mohammad Souri1, Samaneh Zare Harofte1, Tina Harati1, Atefeh Khadem1, Mohammad Haeri Pour1, Kaamran Raahemifar3,6,7.
Abstract
Application of drugs in high doses has been required due to the limitations of no specificity, short circulation half-lives, as well as low bioavailability and solubility. Higher toxicity is the result of high dosage administration of drug molecules that increase the side effects of the drugs. Recently, nanomedicine, that is the utilization of nanotechnology in healthcare with clinical applications, has made many advancements in the areas of cancer diagnosis and therapy. To overcome the challenge of patient-specificity as well as time- and dose-dependency of drug administration, artificial intelligence (AI) can be significantly beneficial for optimization of nanomedicine and combinatorial nanotherapy. AI has become a tool for researchers to manage complicated and big data, ranging from achieving complementary results to routine statistical analyses. AI enhances the prediction precision of treatment impact in cancer patients and specify estimation outcomes. Application of AI in nanotechnology leads to a new field of study, i.e., nanoinformatics. Besides, AI can be coupled with nanorobots, as an emerging technology, to develop targeted drug delivery systems. Furthermore, by the advancements in the nanomedicine field, AI-based combination therapy can facilitate the understanding of diagnosis and therapy of the cancer patients. The main objectives of this review are to discuss the current developments, possibilities, and future visions in naoinformatics, for providing more effective treatment for cancer patients.Entities:
Keywords: artificial intelligence; cancer; clinical translation; deep learning; drug delivery; machine learning; nanoinformatics; nanomedicine
Year: 2021 PMID: 34069606 PMCID: PMC8161319 DOI: 10.3390/cancers13102481
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639
AI algorithms that are used in drug delivery research and their applications.
| Algorithm | Application in Drug Delivery | Mathematical Equation | Reference |
|---|---|---|---|
| Multilayer perceptron (MLP) | Predicting profile of drug dissolution, design of controlled release applications, optimization of the drug release profile and formulations | ||
| Recurrent neural networks (RNNs) | Modeling or characterizing drug release from controlled release formulations | − | [ |
| Artificial neural networks & Genetic algorithm (ANN&GA) | Optimization of the formulations such as controlled released ones, and optimization of the method of detection of similar | − | [ |
| General regression neural network (GRNN) | Dependable estimation of drug behavior in vivo and compensation of dissimilarities in the drug release kinetics under various conditions | [ |
Figure 1(a) Architecture of G-ANN in the analysis of release procedure. (b) Using ANNs, SVR and LS-SVM models for modeling the release behavior of DOX from temperature and pH responsive poly(NIPAAm-co-AAc)-PEG IPN hydrogel [34].
A summary of some studies utilizing AI methods for drug delivery.
| Target Patients | AI Method | Study Focus | Year | Reference |
|---|---|---|---|---|
| Asthmatic patients taking monodisperse aerosols of salbutamol sulphate | ANNs | Estimating lung deposition, predicting aerosol behavior, and modeling the correlation between the in vitro data and in vivo effects | 2010 | [ |
| Type 1 diabetic patients | ANNs | Identifying the glycemic regulation and patient dynamics | 2012 | [ |
| Obese patients | Fuzzy logic models | Realizing the causes of obesity, averting obesity or diminishing its morbidity and mortality, and enhancing the quality of patient’s life | 2012 | [ |
| Patients with colorectal cancer | An AI model | Determining the prerequisite for further surgery subsequent to the endoscopic resection of tumor and predicting the risk of lymph node metastasis | 2018 | [ |
| − | G-ANNs | Optimizing the curcumin release by inspecting the reaction of the loading step | 2018 | [ |
| Mellitus type 2 diabetic patients | ANNs | Designing the sustained-release matrix tablets carrying | 2018 | [ |
| − | Machin learning (ML) | Determining the interaction/insertion potential of CPPs into three different phospholipid monolayers | 2019 | [ |
| − | ANNs, SVR and LS-SVM models | Modeling the complex and nonlinear release behavior of DOX from the IPN hydrogels | 2020 | [ |
Figure 2(a) The structure of feedback system control. Stage 1: Loading of bleomycin (BLEO), mitoxantrone (MTX), and DOX onto NDs was performed using physisorption, forming uniform and stable colloidal solutions, and combinations were designed. Stage 2: Using customized liquid handling robotic procedures, the drug combinations were applied to several types of cancers and control cells. The viability of cancer cell lines and control cell lines were utilized to feed into the informatics system. Stage 3: The informatics system provided cellular response surfaces by regression analysis with the customized statistic model on the combinations. Global combinatorial optimization was performed by differential evolution on the surface of the therapeutic window. Then the predicted randomized and optimum combinations were experimentally verified to confirm mapping accuracy [50]. (b) Make use of AI for nanomedicine optimization. A schematic doublet nanotherapy drug interaction map is present. Using rationally designed combination nanotherapy arrangements for initial calibration experiments [21].
Figure 3Computational methods promote different aspects of NP design. Available computational models and ML algorithms allow the prediction of NP charge and size, drug EE%, engaging with biomembranes, biofluids, and drug release kinetics; adapted from [55].
Figure 4Applications of AI, computer vision, and ML in clinical development; adapted from [56].
Figure 5Cellular uptake with endocytosis pathways.