Authors :
Abhimanyu C. J.; Kiran Kapuram; Challa Venkatshewarlu; Gayathri K.; Bhargavi Depuru; Srija Depuru; Bharani Kumar Depuru
Volume/Issue :
Volume 11 - 2026, Issue 2 - February
Google Scholar :
https://tinyurl.com/5fsvzbcu
Scribd :
https://tinyurl.com/2dc899j8
DOI :
https://doi.org/10.38124/ijisrt/26feb1461
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Abstract :
Precise tracking of In-Vitro Fertilization (IVF) procedures is vital for improving medical results and refining
patient guidance. Nevertheless, the intricate nature of multidimensional clinical datasets, which include diverse patient
profiles and medical protocols, frequently prevents fertility centers from obtaining a comprehensive understanding of
success trends. This study introduces "Fertility Insights," an analytical approach utilizing the CRISP-ML(Q) methodology
to simplify IVF oversight through data-centered visualization. The architecture employs a local data stream where primary
clinical files are refined via Python for stringent data validation and normalization. The cleaned data is then hosted in a
unified MySQL repository, maintaining data consistency and organized retrieval for longitudinal studies. Lastly, dynamic
dashboards are created within Power BI to illustrate essential performance metrics, including the variance in success rates.
This system equips healthcare professionals with practical intelligence regarding therapeutic impact and facility
productivity. This research highlights how descriptive modeling can effectively turn complicated reproductive data into a
functional resource for clinical strategy.
Keywords :
IVF Monitoring, Descriptive Analytics, Data Visualization, Power BI, MySQL Data Warehouse, Fertility Insights, Clinical Data Management, Patient Demographics, Treatment Success Analysis, Growth Hacking in Healthcare.
References :
- Costa Figueiredo, M. (2021). Data Work and Data Tracking Technologies in Fertility Care: A Holistic Approach (Doctoral dissertation). University of California, Irvine.
- De Santiago, I., & Polanski, L. (2022). Data-Driven Medicine in the Diagnosis and Treatment of Infertility. Journal of Clinical Medicine, 11(21), 6426.
- Wirth, R., & Hipp, J. (2000). CRISP-DM: Towards a standard process model for data mining. In Proceedings of the 4th International Conference on the Practical Applications of Knowledge Discovery and Data Mining.
- Studer, S., Bui, T. B., Drescher, C., Hanuschkin, A., Winkler, L., Peters, S., & Mueller, K.-R. (2021). Towards CRISP-ML(Q): A machine learning process model with quality assurance methodology. Machine Learning and Knowledge Extraction, 3(2), 392–413.
- Meseguer, M., Herrero, J., Tejera, A., Hilligsøe, K. M., Ramsing, N. B., & Remohí, J. (2011). The use of morphokinetics as a predictor of embryo implantation. Human Reproduction, 26(10), 2658–2671.
- Topol, E. (2019). High-performance medicine: The convergence of human and artificial intelligence. Nature Medicine, 25(1), 44–56.
- Esteva, A., Kuprel, B., Novoa, R. A., Ko, J., Swetter, S. M., Blau, H. M., & Thrun, S. (2019). A guide to deep learning in healthcare. Nature Medicine, 25(1), 24–29.
- Costa Figueiredo, M. (2021). Data Work and Data Tracking Technologies in Fertility Care: A Holistic Approach (Doctoral dissertation). University of California, Irvine.
- Tran, D., Cooke, S., Illingworth, P., & Gardner, D. K. (2019). Deep learning as a predictive tool for fetal heart pregnancy following time-lapse incubation and blastocyst transfer. Human Reproduction, 34(6), 1011–1018.
- Shortliffe, E. H., & Sepúlveda, M. J. (2018). Clinical decision support in the era of artificial intelligence. JAMA, 320(21), 2199–2200
Precise tracking of In-Vitro Fertilization (IVF) procedures is vital for improving medical results and refining
patient guidance. Nevertheless, the intricate nature of multidimensional clinical datasets, which include diverse patient
profiles and medical protocols, frequently prevents fertility centers from obtaining a comprehensive understanding of
success trends. This study introduces "Fertility Insights," an analytical approach utilizing the CRISP-ML(Q) methodology
to simplify IVF oversight through data-centered visualization. The architecture employs a local data stream where primary
clinical files are refined via Python for stringent data validation and normalization. The cleaned data is then hosted in a
unified MySQL repository, maintaining data consistency and organized retrieval for longitudinal studies. Lastly, dynamic
dashboards are created within Power BI to illustrate essential performance metrics, including the variance in success rates.
This system equips healthcare professionals with practical intelligence regarding therapeutic impact and facility
productivity. This research highlights how descriptive modeling can effectively turn complicated reproductive data into a
functional resource for clinical strategy.
Keywords :
IVF Monitoring, Descriptive Analytics, Data Visualization, Power BI, MySQL Data Warehouse, Fertility Insights, Clinical Data Management, Patient Demographics, Treatment Success Analysis, Growth Hacking in Healthcare.