Abstract
Abstract: Colon cancer is a prevalent and life-threatening disease, necessitating accurate and timely diagnosis for effective
treatment and improved patient outcomes. This research paper presents the development of a knowledge-based system for
diagnosing colon cancer using the CLIPS language. Knowledge-based systems offer the potential to assist healthcare
professionals in making informed diagnoses by leveraging expert knowledge and reasoning mechanisms. The methodology
involves acquiring and structuring medical knowledge specific to colon cancer, followed by the implementation of a knowledge-
based system using CLIPS. The system's design integrates relevant medical databases and employs advanced reasoning
mechanisms to facilitate accurate diagnosis. Evaluation results demonstrate the system's effectiveness, with high accuracy and
sensitivity rates compared to existing methods. The findings highlight the potential of knowledge-based systems in improving
clinical practice and patient care. The research contributes to the growing field of medical informatics by demonstrating the
feasibility and effectiveness of CLIPS-based knowledge systems for colon cancer diagnosis. Future research can focus on
enhancing system performance and expanding its scope to encompass other types of cancer diagnoses.