Application of AI in urban medicine Application of AI in urban medicine

Main Article Content

Somsri Wiwanitk
Viroj Wiwanitkit

Abstract

Globally, the application of artificial intelligence (AI) in urban medicine is changing the way healthcare is delivered in cities. AI is transforming how urban healthcare providers provide patient care, from early disease detection to personalised treatment plans. This review paper examines the various applications of AI in urban medicine, such as telemedicine, diagnostics, predictive analytics, patient monitoring, and drug development. The authors also discuss how AI influences healthcare efficiency, quality, and accessibility in cities.

Article Details

How to Cite
Wiwanitk, S. ., & Wiwanitkit, V. (2024). Application of AI in urban medicine: Application of AI in urban medicine. Vajira Medical Journal : Journal of Urban Medicine, e269654. https://doi.org/10.62691/vmj.2024.269654
Section
Review Articles

References

Utkum Ikiz S. How can artificial intelligence revolutionize urban health for proactive wellbeing? [internet]. 2023 [cite 2024 Apr 2]. Available online at https://parametricarchitecture.com/how-can-artificialintelligence-revolutionize-urban-health-forproactive-well-being/#google_vignette

McKinney SM, Sieniek M, Godbole V, Godwin J, Antropova N, Ashrafian H, et al. International evaluation of an AI system for breast cancer screening. Nature 2020;577(7788):89-94.

Yang WH, Zheng B, Wu MN, Zhu SJ, Fei FQ, Weng M, et al. An evaluation system of fundus photograph-based intelligent diagnostic technology for diabetic retinopathy and applicability for research. Diabetes Ther 2019;10(5):1811-22.

Wang K, Ghafurian M, Chumachenko D, Cao S, Butt ZA, Salim S, et al. Application of artificial intelligence in active assisted living for aging population in real-world setting with commercial devices - a scoping review. Comput Biol Med 2024;173:108340.

Ianculescu M, Paraschiv EA, Alexandru A. Addressing mild cognitive impairment and boosting wellness for the elderly through personalized remote monitoring. Healthcare (Basel) 2022;10(7):1214.

Wang Y, Liu C, Hu W, Luo L, Shi D, Zhang J, et al. Economic evaluation for medical artificial intelligence: accuracy vs. cost-effectiveness in a diabetic retinopathy screening case. NPJ Digit Med 2024;7(1):43.

Mars M. Telemedicine and advances in urban and rural healthcare delivery in Africa. Prog Cardiovasc Dis 2013;56(3):326-35.

Deslich S, Coustasse A. Expanding technology in the ICU: the case for the utilization of telemedicine. Telemed J E Health 2014;20(5):485-92.

Skillman SM, Doescher MP, Mouradian WE, Brunson DK. The challenge to delivering oral health services in rural America. J Public Health Dent 2010;70 Suppl 1:S49-57.

Ellahham S. Artificial intelligence: the future for diabetes care. Am J Med 2020;133(8):895-900.

Sahashi S, Sugimura H. Lecture No. 10 AI and telemedicine: how is technology transforming the horizons for global health? Jpn J Clin Oncol 2021;51(12 Suppl 2):i41-4.

Mitsala A, Tsalikidis C, Pitiakoudis M, Simopoulos C, Tsaroucha AK. Artificial intelligence in colorectal cancer screening, diagnosis and treatment. A new era. Curr Oncol 2021;28(3):1581-607.

Xu Z, Biswas B, Li L, Amzal B. AI/ML in precision medicine: a look beyond the hype. Ther Innov Regul Sci 2023;57(5):957-62.

Johnson KB, Wei WQ, Weeraratne D, Frisse ME, Misulis K, Rhee K, et al. Precision medicine, AI, and the future of personalized health care. Clin Transl Sci 2021;14(1):86-93.

Bhinder B, Gilvary C, Madhukar NS, Elemento O. Artificial intelligence in cancer research and precision medicine. Cancer Discov 2021;11(4):900-15.

Mahesh Batra A, Reche A. A new era of dental care: harnessing artificial intelligence for better diagnosis and treatment. Cureus 2023;15(11):e49319.

Reddy S. Generative AI in healthcare: an implementation science informed translational path on application, integration and governance. Implement Sci 2024;19(1):27.

Segato A, Marzullo A, Calimeri F, De Momi E. Artificial intelligence for brain diseases: a systematic review. APL Bioeng 2020;4(4):041503.

Ranschaert E, Topff L, Pianykh O. Optimization of radiology workflow with artificial intelligence. Radiol Clin North Am 2021;59(6):955-66.

Tefera MK, Jin Z, Zhang S. A review of fundamental optimization approaches and the role of AI enabling technologies in physical layer security. Sensors (Basel) 2022;22(9):3589.

Jin X, Frock A, Nagaraja S, Wallqvist A, Reifman J. AI algorithm for personalized resource allocation and treatment of hemorrhage casualties. Front Physiol 2024;15:1327948.

Baron R, Haick H. Mobile diagnostic clinics. ACS Sens 2024;9(6):2777-92.

Poncette AS, Mosch L, Spies C, Schmieding M, Schiefenhövel F, Krampe H, et al. Improvements in patient monitoring in the intensive care unit: survey study. J Med Internet Res 2020;22(6):e19091.

Schweingruber N, Gerloff C. Künstliche intelligenz in der neurointensivmedizin [artificial intelligence in neurocritical care]. Nervenarzt 2021;92(2):115-26.

Ayers JW, Poliak A, Dredze M, Leas EC, Zhu Z, Kelley JB, et al. Comparing physician and artificial intelligence chatbot responses to patient questions posted to a public social media forum. JAMA Intern Med 2023;183(6):589-96.

Morrow E, Zidaru T, Ross F, Mason C, Patel KD, Ream M, et al. Artificial intelligence technologies and compassion in healthcare: a systematic scoping review. Front Psychol 2023;13:971044.

Elendu C, Amaechi DC, Elendu TC, Jingwa KA, Okoye OK, John Okah M, et al. Ethical implications of AI and robotics in healthcare: a review. Medicine (Baltimore) 2023;102(50):e36671.

Vemula D, Jayasurya P, Sushmitha V, Kumar YN, Bhandari V. CADD, AI and ML in drug discovery: a comprehensive review. Eur J Pharm Sci 2023;181:106324.

Jiménez-Luna J, Grisoni F, Weskamp N, Schneider G. Artificial intelligence in drug discovery: recent advances and future perspectives. Expert Opin Drug Discov 2021;16(9):949-59.

Paul D, Sanap G, Shenoy S, Kalyane D, Kalia K, Tekade RK. Artificial intelligence in drug discovery and development. Drug Discov Today 2021;26(1):80-93.

Hamet P, Tremblay J. Artificial intelligence in medicine. Metabolism 2017;69S:S36-40.

Caiata-Zufferey M, De Pietro C. Motivational interviewing for prevention in Swiss family medicine: opportunities and challenges. Prev Med Rep 2023;35:102351.

Jansen C, Baker JD, Kodaira E, Ang L, Bacani AJ, Aldan JT, et al. Medicine in motion: opportunities, challenges and data analytics-based solutions for traditional medicine integration into western medical practice. J Ethnopharmacol 2021;267:113477.