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Aggregation operators enhance the classification of ACL-ruptured knees using arthrometric data
Frontiers in Biomedical Technologies. 2014; 1 (2): 103-110
en Inglés | IMEMR | ID: emr-191526
ABSTRACT
Many people suffer from the anterior cruciate ligament [ACL] injury, which can lead to knee instability associated with damage to other knee structures

Purpose:

In this study we present a classification method based on aggregation operators, using Adaptive Network-based Fuzzy Inference System [ANFIS] and Multilayer Perceptron [MLP] neural network to differentiate between arthrometric data of normal and ACL-ruptured knees.

Methods:

The data involves 132 samples consisting of 59 patients with injured knee and 73 normal subjects. ANFIS hybrid training algorithm is implemented using Fuzzy C-Means [FCM] and subtractive data clustering. The Levenberg–Marquardt [LM] training algorithm is used for MLP neural network. The results of ANFIS and MLP are then combined using aggregation operators.

Results:

The best accuracy [96%] is obtained by applying Choquet integral to the outputs of ANFIS classifier with the antecedent parameters selected using FCM algorithm.

Conclusion:

The experimental results show that aggregation operators enhance the outcomes of ANFIS and MLP classifiers in discriminating between ACL raptured knees and normal subjects.
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Índice: IMEMR (Mediterraneo Oriental) Idioma: Inglés Revista: Front. Biomed. Technol. Año: 2014

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Índice: IMEMR (Mediterraneo Oriental) Idioma: Inglés Revista: Front. Biomed. Technol. Año: 2014