Predictive Analytics and Generative AI for Optimizing Cer-vical and Breast Cancer Outcomes: A Data-Centric Approach

Authors

  • RamMohan Reddy Kundavaram Application Support Analyst, Common Securitization Solutions, Bethesda, MD 20814, USA
  • Kawsher Rahman Lecturer of Anatomy, Faculty of International Study (Medical Sciences), Jiujiang University, Jiujiang, China
  • Krishna Devarapu AWS Data Engineer, Techno Bytes Inc., 909 Hidden Ridge, Suite 600, Irving, TX 75038, USA
  • Deekshith Narsina Senior Software Engineer, Capital One, 1600 Capital One Dr, Mclean, VA- 22102, USA
  • Arjun Kamisetty Software Developer, Fannie Mae, 2000 Opportunity Wy, Reston, VA 20190, USA
  • Jaya Chandra Srikanth Gummadi Programmer Analyst, Pioneer Global Inc., Ashburn, Virginia, USA
  • Rajasekhar Reddy Talla Independent Researcher, USA
  • Abhishake Reddy Onteddu Software Engineer, IT Pandits, Pawtucket, RI, USA
  • Srinikhita Kothapalli Software Engineer, UPS, 825 lotus Ave, Louisville, Kentucky  40213, USA

DOI:

https://doi.org/10.18034/ra.v6i3.672

Keywords:

Predictive Analytics, Generative AI, Cervical Cancer, Breast Cancer, Data-Centric Approach, Machine Learning, Healthcare Optimization, Clinical Decision Support

Abstract

This research uses a data-centric approach to examine how predictive analytics and generative AI might improve cervical and breast cancer outcomes. The main goals are early identification, personalized therapy, patient monitoring, and health inequities. A thorough secondary data evaluation synthesizes information from numerous trials to assess these new clinical oncology methods. Significant results show that predictive analytics increases risk classification and therapy tailoring, while generative AI strengthens patient profiles for targeted treatments and dynamic monitoring. By detecting patterns in underprivileged communities, data-centric initiatives reduce health inequities. According to the research, data quality issues, and physician training require improvement. Policy implications include standardized data collecting, fostering health system interoperability, and subsidizing bias-reduction efforts. With these advancements, the healthcare system can increase precision medicine, cervical and breast cancer survival, and quality of life. This study shows that predictive analytics and generative AI are essential to improving cancer treatment.

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References

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Published

31-12-2018

How to Cite

Kundavaram, R. R., Rahman, K., Devarapu, K., Narsina, D., Kamisetty, A., Gummadi, J. C. S., Talla, R. R., Onteddu, A. R., & Kothapalli, S. (2018). Predictive Analytics and Generative AI for Optimizing Cer-vical and Breast Cancer Outcomes: A Data-Centric Approach . ABC Research Alert, 6(3), 214-223. https://doi.org/10.18034/ra.v6i3.672

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