Saidin, Mohammad Norrish (2006) Pengkelasan Sel Kanser Pangkal Rahim Kepada Sel Normal Dan Tidak Normal Menggunakan Analisis Pembezalayan Dan Rangkaian Neural. Project Report. Universiti Sains Malaysia, Pusat Pengajian Kejuruteraan Elektrik dan Elektronik. (Submitted)
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Abstract
The topic of this project is classification of cervical cells into normal and abnormal using 2 group discriminant analysis and neural network. The type of the neural network is multilayed perceptron (MLP) network using software MATLAB® 6.5 and discriminant analysis using software SPSS® 13.0. The system is built to classify some certain data into two classes, which are normal or abnormal cells. Data are using for this project is nucleus size, cytoplasm size, nucleus grey level and cytoplasm grey level. The data are separated into two sets; training data set and testing data set. There are 128 data in training data set and 72 data in testing data set. The neural network is trained using two types of learning algorithms, which is Levenberg-Marquardt and Back Propagation. The optimum value of epoch and hidden nodes for each learning algorithm are determined based on the highest accuracy obtained during training phases. For discriminant analysis, training data are used to simulate to obtain accuracy and cut-off point. From the result, the neural network and disriminant analysis show the 100% accuracy. As a conclusion, the neural network and discriminant analysis has high capability to classify the cervical cells into normal and abnormal.
Item Type: | Monograph (Project Report) |
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Subjects: | T Technology T Technology > TK Electrical Engineering. Electronics. Nuclear Engineering |
Divisions: | Kampus Kejuruteraan (Engineering Campus) > Pusat Pengajian Kejuruteraaan Elektrik & Elektronik (School of Electrical & Electronic Engineering) > Monograph |
Depositing User: | Mr Engku Shahidil Engku Ab Rahman |
Date Deposited: | 01 Jun 2023 08:38 |
Last Modified: | 01 Jun 2023 08:38 |
URI: | http://eprints.usm.my/id/eprint/58764 |
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