ACADSTAFF UGM

CREATION
Title : Classification of Plasmodium Falciparum Based On Textural and Morphological Features
Author :

DONI SETYAWAN (1) Prof. Drs. Retantyo Wardoyo, M.Sc., Ph.D. (2) Moh. Edi Wibowo, S.Kom.,M.Kom., Ph.D. (3) dr. E. Elsa Herdiana Murhandarwati, M.Kes., Ph.D (4)

Date : 0 2022
Keyword : Plasmodium falciparum ,HSV color space ,Texture feature ,Morphological feature, Neural network Plasmodium falciparum ,HSV color space ,Texture feature ,Morphological feature, Neural network
Abstract : Malaria is a disease caused by Plasmodium parasites transmitted through the bites of female anopheles-mosquito that infect the human red blood cells (RBC). The standard malaria diagnosis is based on manual examination of a thick and thin blood smear, which heavily depends on the microscopist experience. This study proposed a system that can identify the life stages of plasmodium falciparum, i.e., ring, trophozoite, schizont, and gametocyte in human RBC. The system consists of five parts, namely image acquisition, preprocessing, image segmentation, feature extraction, and classification. The image preprocessing process is done using contrast stretching continued with HSV conversion to get the saturation and value channel, and then median filtering to remove the noise. Image segmentation using global intensity and Otsu thresholding. The feature extraction process utilizes a combination of texture and morphological features, then using neural networks to classify the life stages of Plasmodium. The results show that the proposed method achieves an accuracy of 80.95 %, a sensitivity of 81 %, and a specificity of 88.89 %, thus improving decision-making for malaria diagnosis.
Group of Knowledge : Ilmu Komputer
Original Language : English
Level : Internasional
Status :
Published
Document
No Title Document Type Action
1 Acceptance letter IJECE Doni.pdf
Document Type : Bukti Accepted
Bukti Accepted View
2 28444-55212-1-PB.pdf
Document Type : [PAK] Full Dokumen
[PAK] Full Dokumen View
3 Koresponding IJECE Doni.pdf
Document Type : [PAK] Bukti Korespondensi Penulis
[PAK] Bukti Korespondensi Penulis View
4 28444-55212-1-PB.pdf
Document Type : Bukti Published
Bukti Published View
5 Malaria_Classification_Using_Convolutional_Neural_Network_A_Review.pdf
Document Type : Bukti Draft
Bukti Draft View
6 Classification of plasmodium falciparum based on textural and morphological features.pdf
Document Type : [PAK] Cek Similarity
[PAK] Cek Similarity View
7 Classification of Plasmodium Falciparum Based On Textural and Morphological Features - komplit (2).pdf
Document Type : [PAK] Full Dokumen
[PAK] Full Dokumen View
8 Article+EC-Classification of plasmodium falciparum based on textural and morphological features.pdf
Document Type : [PAK] Full Dokumen
[PAK] Full Dokumen View