Enhancing Clinical Translation of Cancer Using Nanoinformatics.
Madjid SoltaniFarshad Moradi KashkooliMohammad SouriSamaneh Zare HarofteTina HaratiAtefeh KhademMohammad Haeri PourKaamran RaahemifarPublished in: Cancers (2021)
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.
Keyphrases
- artificial intelligence
- big data
- combination therapy
- machine learning
- deep learning
- healthcare
- cancer therapy
- papillary thyroid
- drug administration
- type diabetes
- emergency department
- case report
- skeletal muscle
- drug induced
- oxidative stress
- mesenchymal stem cells
- metabolic syndrome
- bone marrow
- social media
- insulin resistance
- cell therapy