Optimizing Post-Cancer Treatment Prognosis: A Study of Machine Learning and Ensemble Techniques
Journal:
arXiv
Published Date:
Apr 21, 2025
Abstract
The aim is to create a method for accurately estimating the duration of
post-cancer treatment, particularly focused on chemotherapy, to optimize
patient care and recovery. This initiative seeks to improve the effectiveness
of cancer treatment, emphasizing the significance of each patient's journey and
well-being. Our focus is to provide patients with valuable insight into their
treatment timeline because we deeply believe that every life matters. We
combined medical expertise with smart technology to create a model that
accurately predicted each patient's treatment timeline. By using machine
learning, we personalized predictions based on individual patient details which
were collected from a regional government hospital named Sylhet M.A.G. Osmani
Medical College & Hospital, Sylhet, Bangladesh, improving cancer care
effectively. We tackled the challenge by employing around 13 machine learning
algorithms and analyzing 15 distinct features, including LR, SVM, DT, RF, etc.
we obtained a refined precision in predicting cancer patient's treatment
durations. Furthermore, we utilized ensemble techniques to reinforce the
accuracy of our methods. Notably, our study revealed that our majority voting
ensemble classifier displayed exceptional performance, achieving 77% accuracy,
with LightGBM and Random Forest closely following at approximately 76%
accuracy. Our research unveiled the inherent complexities of cancer datasets,
as seen in the Decision Tree's 59% accuracy. This emphasizes the need for
improved algorithms to better predict outcomes and enhance patient care. Our
comparison with other methods confirmed our promising accuracy rates, showing
the potential impact of our approach in improving cancer treatment strategies.
This study marks a significant step forward in optimizing post-cancer treatment
prognosis using machine learning and ensemble techniques.