1. An Optimal Learning Model for Training Expert System to Detect Uterine Cancer
- Author
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Jannat Fardoush, Nahed Sharmen, Sultana Rokeya Naher, Tanjim Mahmud, Juel Sikder, Umme Salma, and Sajib Tripura
- Subjects
Structure (mathematical logic) ,Artificial neural network ,business.industry ,Computer science ,media_common.quotation_subject ,Cancer ,Disease ,Ambiguity ,medicine.disease ,Machine learning ,computer.software_genre ,Expert system ,Support vector machine ,Uterine cancer ,medicine ,General Earth and Planetary Sciences ,Artificial intelligence ,business ,computer ,General Environmental Science ,media_common - Abstract
In both developed and emerging countries, like Bangladesh, uterine cancer is one of the most common cancers for women. It is also the sixth most common cancer among females in the world and the fourteenth most common cancer in total. In recent years, the high prevalence of uterine cancer in women has risen dramatically. This covers several aspects that are linked to the signs and symptoms of this disease that are to be assessed and tested. Typically, these dimensions are expressed in quantitative and qualitative forms and also exist different kinds of uncertainty. Therefore, by using suitable methods to resolve the problem of uncertainty; otherwise, the detecting procedure will become unreliable. There are several systems proposed in this paper to tackle the problem. None of them, however, is worthy of solving the problem of ambiguity. This paper explains the development of a Belief Rule Based Expert System using the RIMER method, which by taking into account signs and symptoms, is able to detect the involvement of malignant tumors and risk factors for this cancer under uncertainty. Specifically, the system will expect a huge employment in diminishing the cost of lab assessments. The structure will support patients in making judicious strides well early. Moreover, this research has been done on MATLAB environment shown that the yields produced using the made system are more reliable than from manual structure, artificial neural network (ANN) and support vector machine (SVM).
- Published
- 2021