Artificial Intelligence in Healthcare: Revealing Novel Approaches to Cancer Treatment, Fraud Investigation, and Petroleum Industry Perspectives
DOI:
10.47709/ijmdsa.v3i4.4637Keywords:
Data privacy, machine learning, telemedicine, personalized medicine, artificial intelligence, cancer medicine, fraud detection, predictive maintenance, optimization, cross-disciplinary innovationsDimension Badge Record
Abstract
Artificial Intelligence (AI) is increasingly transforming healthcare by enhancing diagnostic accuracy, personalizing treatment, and improving operational efficiencies. This review explores AI's impact across several key areas: cancer medicine, fraud detection, and lessons from the petroleum industry. In cancer medicine, AI-driven advancements are leading to more accurate diagnostics, personalized treatment plans, and predictive models for patient outcomes. In fraud detection, AI techniques such as anomaly detection and natural language processing are effectively identifying and mitigating fraudulent activities, safeguarding financial and operational integrity. Insights from the petroleum industry reveal how AI applications, such as predictive maintenance and operational optimization, can be adapted to healthcare settings to enhance equipment reliability and resource management. Emerging trends include the integration of AI with genomics, telemedicine, and cross-disciplinary innovations, which promise further advancements in personalized care and operational efficiency. However, ethical considerations such as data privacy, bias, and transparency must be addressed to ensure responsible AI deployment. The review concludes by highlighting the need for continued innovation, collaboration, and patient-centric approaches to fully realize AI's potential in transforming healthcare and improving patient outcomes.
Abstract viewed = 138 times
References
D. Wiltbank, Read, D. Sarasvathy, What to do next? The case for non-predictive strategy. Strat. Manage. J. 27(10), 981–998 (2006). https://doi.org/10.1002/smj.555
Zeb, S., Nizamullah, F. N. U., Abbasi, N., & Fahad, M. (2024). AI in Healthcare: Revolutionizing Diagnosis and Therapy. International Journal of Multidisciplinary Sciences and Arts, 3(3).
Abbasi, N., Nizamullah, F. N. U., & Zeb, S. (2023). AI IN HEALTHCARE: USING CUTTING-EDGE TECHNOLOGIES TO REVOLUTIONIZE VACCINE DEVELOPMENT AND DISTRIBUTION. JURIHUM: Jurnal Inovasi dan Humaniora, 1(1), 17-29.
Thevenet, Salinesi, Aligning IS to organization’s strategy: The InStAl method BT, in Advanced Information Systems Engineering, (Springer, Berlin, 2007), pp. 203–217
Zeb, S., Nizamullah, F. N. U., Abbasi, N., & Qayyum, M. U. (2024). Transforming Healthcare: Artificial Intelligence's Place in Contemporary Medicine. BULLET: Jurnal Multidisiplin Ilmu, 3(4).
M.-R. Bragge, Nurmi, Tanner, A repeatable e-collaboration process based on thinklets for multi-organization strategy development. Group Decis. Negot. 16(4), 363–379 (2007). https://doi.org/10.1007/s10726-006-9055-5
F. Yean, K. Yahya, The influence of human resource management practices and career strategy on career satisfaction of insurance agents. Int. J. Business Soc. 14(2), 193 (2013)
Lodhi, S. K., Hussain, I., & Gill, A. Y. (2024). Artificial Intelligence: Pioneering the Future of Sustainable Cutting Tools in Smart Manufacturing. BIN: Bulletin of Informatics, 2(1), 147-162.
Tomlin, Wang, Operational strategies for managing supply chain disruption risk, in The Handbook of Integrated Risk Management in Global Supply Chains, (Wiley, Oxford, 2011), pp. 79–101. https://doi.org/10.1002/9781118115800
X. Belle, Peng, Review of business intelligence through data analysis. BIJ 21(2), 300–311 (2014). https://doi.org/10.1108/BIJ-08-2012-0050
Lodhi, S. K., Gill, A. Y., & Hussain, I. (2024). AI-Powered Innovations in Contemporary Manufacturing Procedures: An Extensive Analysis. International Journal of Multidisciplinary Sciences and Arts, 3(4), 15-25.
R. Heath, Prediction machines: The simple economics of artificial intelligence. J. Inform. Technol. Case Appl. Res. 21(3–4), 163–166 (2019). https://doi.org/10.1080/15228053.2019.1673511
Larson, Chang, A review and future direction of agile, business intelligence, analytics and data science. Int. J. Inform. Manage. 36(5), 700–710 (2016). https://doi.org/10.1016/j.ijinfomgt.2016.04.013
Lodhi, S. K., Hussain, H. K., & Hussain, I. (2024). Using AI to Increase Heat Exchanger Efficiency: An Extensive Analysis of Innovations and Uses. International Journal of Multidisciplinary Sciences and Arts, 3(4), 1-14.
Jamal, A. (2023). Novel Approaches in the Field of Cancer Medicine. Biological times, 2(12), 52-53.
Vercellis, Business intelligence: data mining and optimization for decision making (Wiley, London, 2009)
L. Arnott, Song, Patterns of business intelligence systems use in organizations. Decis. Support Syst. 97, 58–68 (2017)
Valli, L. N., Sujatha, N., Mech, M., & Lokesh, V. S. (2024). Ethical considerations in data science: Balancing privacy and utility. International Journal of Science and Research Archive, 11(1), 011-022.
Ezeamii, V. C., Ofochukwu, V. C., Iheagwara, C., Asibu, T., Ayo-Farai, O., Gebeyehu, Y. H., & Okobi, O. E. (2024). COVID-19 vaccination rates and predictors of uptake among adults with coronary heart disease: insight from the 2022 National Health Interview Survey. Cureus, 16(1).
Valli, L. N. (2024). Under the titles for Risk Assessment, Pricing, and Claims Management, write Modern Analytics. Global Journal of Universal Studies, 1(1), 132-151.
Ezeamii, V., Adhikari, A., Caldwell, K. E., Ayo-Farai, O., Obiyano, C., & Kalu, K. A. (2023, November). Skin itching, eye irritations, and respiratory symptoms among swimming pool users and nearby residents in relation to stationary airborne chlorine gas exposure levels. In APHA 2023 Annual Meeting and Expo. APHA.
Familoni, B. T. (2024). Cybersecurity challenges in the age of AI: theoretical approaches and practical solutions. Computer Science & IT Research Journal, 5(3), 703-724.
Familoni, B. T., & Babatunde, S. O. (2024). User experience (UX) design in medical products: theoretical foundations and development best practices. Engineering Science & Technology Journal, 5(3), 1125-1148.
Familoni, B. T., & Onyebuchi, N. C. (2024). Advancements and challenges in AI integration for technical literacy: a systematic review. Engineering Science & Technology Journal, 5(4), 1415-1430.
Igbinenikaro, O. P., Adekoya, O. O., & Etukudoh, E. A. (2024). Fostering cross-disciplinary collaboration in offshore projects: strategies and best practices. International Journal of Management & Entrepreneurship Research, 6(4), 1176-1189. https://doi.org/10.51594/ijmer.v6i4.1006.
Igbinenikaro, O. P., Adekoya, O. O., & Etukudoh, E. A. (2024). Review of modern bathymetric survey techniques and their impact on offshore energy development. Engineering Science & Technology Journal, 5(4), 1281-1302. https://doi.org/10.51594/estj.v5i4.1018
Ijeh, S., Okolo, C. A., Arowoogun, J. O., & Adeniyi, A. O. (2024). Addressing health disparities through IT: A review of initiatives and outcomes. World Journal of Biology Pharmacy and Health Sciences, 18(1), 107-114.
Chaudhry, A. U., Muneer, R., Lashari, Z. A., Hashmet, M. R., Osei-Bonsu, K., Abdala, A., & Rabbani, H. S. (2024). Recent advancements in novel nanoparticles as foam stabilizer: Prospects in EOR and CO2 sequestration. Journal of Molecular Liquids, 125209.
Lashari, Z. A., Lalji, S. M., Ali, S. I., Kumar, D., Khan, B., & Tunio, U. (2024). Physiochemical analysis of titanium dioxide and polyacrylamide nanofluid for enhanced oil recovery at low salinity. Chemical Papers, 78(6), 3629-3637.
Ijeh, S., Okolo, C. A., Arowoogun, J. O., & Adeniyi, A. O. (2024). Theoretical insights into telemedicine and healthcare ICT: lessons from implementation in Africa and the United States. World Journal of Biology Pharmacy and Health Sciences, 18(1), 115- 122.
Itua, E. O., Bature, J. T., & Eruaga, M. A. (2024). Pharmacy practice standards and challenges in Nigeria: a comprehensive analysis. International Medical Science Research Journal, 4(3), 295-304.
Joel O. T., & Oguanobi V. U. (2024). Data-driven strategies for business expansion: Utilizing predictive analytics for enhanced profitability and opportunity identification. International Journal of Frontiers in Engineering and Technology Research, 2024, 06(02), 071–081. https://doi.org/10.53294/ijfetr.2024.6.2.0035
Joel O. T., & Oguanobi V. U. (2024). Future Directions in geological research impacting renewable energy and carbon capture: a synthesis of sustainable management techniques. International Journal of Frontiers in Science and Technology Research, 2024, 06(02), 071–083 https://doi.org/10.53294/ijfstr.2024.6.2.0039 3 Engineering Science & Technology Journal, Volume 5, Issue 5, May 2024
Nzeako, G., Okeke, C. D., Akinsanya, M. O., Popoola, O. A., & Chukwurah, E. G. (2024). Security paradigms for IoT in telecom networks: Conceptual challenges and solution pathways. Engineering Science & Technology Journal, 5(5), 1606-1626.
Ijeh, S., Okolo, C. A., Arowoogun, J. O., Adeniyi, A. O., & Omotayo, O. (2024). Predictive modeling for disease outbreaks: a review of data sources and accuracy. International Medical Science Research Journal, 4(4), 406-419.
Oguanobi V. U. & Joel O. T., (2024). Scalable business models for startups in renewable energy: strategies for using GIS technology to enhance SME scaling. Engineering Science & Technology Journal, 5, 1571-1587.
Ogugua, J. O., Anyanwu, E. C., Olorunsogo, T., Maduka, C. P., & Ayo-Farai, O. (2024). Ethics and strategy in vaccination: A review of public health policies and practices. International Journal of Science and Research Archive, 11(1), 883-895. Ogundairo, O., Ayo-Farai, O., Maduka, C. P.,
Okongwu, C. C., Babarinde, A. O., & Sodamade, O. T. (2024). Review on MALDI Imaging for Direct Tissue Imaging and its Application in Pharmaceutical Research. International Journal of Research and Scientific Innovation, 10(12), 130-141.
Lodhi, S. K., Gill, A. Y., & Hussain, H. K. (2024). Green Innovations: Artificial Intelligence and Sustainable Materials in Production. BULLET: Jurnal Multidisiplin Ilmu, 3(4), 492-507.
Ojeyinka, O. T., & Omaghomi, T. T. (2024). Climate change and zoonotic diseases: a conceptual framework for predicting and managing health risks in the USA. GSC Biological and Pharmaceutical Sciences, 26(3), 027-036.
Thompson, O. A., Akintuyi, O. B., Omoniyi, L. O., & Fatoki, O. A. (2022). Analysis of land use and land cover change in oil palm producing agro-ecological zones of Nigeria. Journal of Agroforestry and Environment, 15(1), 30-41
Ukoba, K., Kunene, T.J., Harmse, P., Lukong, V.T., & Chien Jen, T. (2023). The role of renewable energy sources and industry 4.0 focus for Africa: a review. Applied Sciences, 13(2), 1074.
Varsha, V. R., Naganandini, S., & Hariharan, C. (2024). Utilizing AI and machine learning for natural disaster management: predicting natural disasters with AI and machine learning. In Internet of Things and AI for Natural Disaster Management and Prediction (pp. 279-304). IGI Global.
Bakare, S. S., Adeniyi, A. O., Akpuokwe, C. U., & Eneh, N. E. (2024). Data privacy laws and compliance: a comparative review of the EU GDPR and USA regulations. Computer Science & IT Research Journal, 5(3), 528-543
Downloads
ARTICLE Published HISTORY
Issue
Section
License
Copyright (c) 2024 Muhammad Fahad, Muhammad Ibrar, Muhammad Umer Qayyum, Ali Husnain
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.