INTERACTIVE NEURO-FUZZY EXPERT SYSTEM FOR DIAGNOSIS OF LEUKEMIA

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Dr. Obi J.C.
Dr. Obi J.C.
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Imianvan A.A.
Imianvan A.A.
α University of Benin University of Benin

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INTERACTIVE NEURO-FUZZY EXPERT SYSTEM FOR DIAGNOSIS OF LEUKEMIA

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Abstract

Abstracts -Leukemia is closely linked with the blood or bone marrow. Leukemia is regard as cancer of the blood cells (usually white blood cells). The abnormal white blood cells formed in leukemia also accumulate in the organs of the body such as the spleen, liver, lymph nodes, testes, and brain, and interfere with normal functioning of the organ. Leukemia is of four common type; Acute lymphocytic leukemia, acute myelogenous leukemia, chronic lymphocytic leukemia and chronic myelogenous leukemia. Leukemia symptoms are predominantly paleness, fatigue, bone pain, asthemia, palpitation, frequent infection, nose bleeding and thrombocytopenia. Neuro-Fuzzy Logic explores approximation techniques from neural networks to finds the parameter of a fuzzy system. In this paper, the traditional procedure for the medical diagnosis of leukemia employed by physician is analyzed using neuro-fuzzy inference procedure. From the system designed if the patient is having five or more of the enlisted symptoms, the patient is experiencing “severe Leukemia” and should go for treatment urgently. If it is approximately four of the symptoms the patient is experiencing, the patient “might be suffering from Leukemia” and hence should see a physician right away, but if it is three or less of the enlisted symptoms, the patient is not “suffering from Leukemia”. The system which demonstrates the practical application of Information and Communication Technology (ICT) in the health sector is interactive and tells the patient his current condition as regards Leukemia.

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Funding

No external funding was declared for this work.

Conflict of Interest

The authors declare no conflict of interest.

Ethical Approval

No ethics committee approval was required for this article type.

Data Availability

Not applicable for this article.

How to Cite This Article

Dr. Obi J.C.. 1970. \u201cINTERACTIVE NEURO-FUZZY EXPERT SYSTEM FOR DIAGNOSIS OF LEUKEMIA\u201d. Unknown Journal GJCST Volume 11 (GJCST Volume 11 Issue 12): .

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GJCST Volume 11 Issue 12
Pg. 47- 54
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v1.2

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July 6, 2011

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Abstracts -Leukemia is closely linked with the blood or bone marrow. Leukemia is regard as cancer of the blood cells (usually white blood cells). The abnormal white blood cells formed in leukemia also accumulate in the organs of the body such as the spleen, liver, lymph nodes, testes, and brain, and interfere with normal functioning of the organ. Leukemia is of four common type; Acute lymphocytic leukemia, acute myelogenous leukemia, chronic lymphocytic leukemia and chronic myelogenous leukemia. Leukemia symptoms are predominantly paleness, fatigue, bone pain, asthemia, palpitation, frequent infection, nose bleeding and thrombocytopenia. Neuro-Fuzzy Logic explores approximation techniques from neural networks to finds the parameter of a fuzzy system. In this paper, the traditional procedure for the medical diagnosis of leukemia employed by physician is analyzed using neuro-fuzzy inference procedure. From the system designed if the patient is having five or more of the enlisted symptoms, the patient is experiencing “severe Leukemia” and should go for treatment urgently. If it is approximately four of the symptoms the patient is experiencing, the patient “might be suffering from Leukemia” and hence should see a physician right away, but if it is three or less of the enlisted symptoms, the patient is not “suffering from Leukemia”. The system which demonstrates the practical application of Information and Communication Technology (ICT) in the health sector is interactive and tells the patient his current condition as regards Leukemia.

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INTERACTIVE NEURO-FUZZY EXPERT SYSTEM FOR DIAGNOSIS OF LEUKEMIA

Dr. Obi J.C.
Dr. Obi J.C. University of Benin
Imianvan A.A.
Imianvan A.A.

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