Cancer remains one of the most formidable health challenges globally, and India has seen a steady rise in cancer incidence rates over the years. The ability to effectively analyze large-scale cancer datasets is crucial for understanding disease patterns, improving diagnosis, and guiding public health interventions. In this research, advanced data mining techniques were leveraged, specifically classification and clustering, to examine cancer incidence patterns in the aftermath of the Bhopal Gas Tragedy, a catastrophic industrial disaster. Our study focuses on comparing the incidence rates of Tobacco-Related Cancer (TCR) and Non-Tobacco-Related Cancer (Non-TCR) in two distinct regions of Bhopal, which were partitioned after the tragedy.
Using over 40 years of data from the Population-Based Cancer
Registry (PBCR) of Bhopal, data mining methodologies were applied to uncover
hidden patterns and correlations within the cancer incidence data. The study
seeks to explore the long-term impact of environmental exposure on cancer
prevalence, particularly the difference in cancer types between the two
regions. By employing the WEKA tool, a well-established platform for machine
learning and data mining, cancer cases were systematically classified and
significant insights were extracted from the data.
Our findings reveal notable differences in cancer incidence
between the two regions, offering insights into how environmental factors,
lifestyle choices, and socio-economic conditions may influence cancer
development. The study highlights the value of data-driven approaches in health
care, particularly as a decision support system for medical analysts. These
insights not only contribute to the understanding of cancer epidemiology in
Bhopal but also underscore the importance of continuous health monitoring in
populations affected by industrial disasters. Furthermore, the methodology
applied in this study serves as a foundation for future research aimed at
improving cancer prevention, early detection, and personalized treatment
strategies in similar contexts.
Author (s) Details
Sanjeev Gour
Department of Computer Science, Medicaps University, Indore, India.
Rajendra Randa
Department of Computer Science, Medicaps University, Indore, India.
Please see the book here:- https://doi.org/10.9734/bpi/mcscd/v10/3147
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