Image of Automated Detection and Classification of Breast Cancer Nuclei with Deep Convolutional Neural Network

Artikel Jurnal

Automated Detection and Classification of Breast Cancer Nuclei with Deep Convolutional Neural Network




Abstract

Heterogeneous regions present in tissue with respect to cancer cells are of various types. This study aimed to analyze and classify the morphological features of the nucleus and cytoplasm regions of tumor cells. This tissue morphology study was established through invasive ductal breast cancer histopathology images accessed from the Databiox public dataset. Automatic detection and classification was carried out by means of the computer analytical tool of deep learning algorithm. Residual blocks with short skip were employed with hidden layers of preserved spatial information. A ResNet-based convolutional neural network was adapted to perform end-to-end segmentation of breast cancer nuclei. Nuclei regions were identified through color and tubular structure morphological features. Based on the segmented and extracted images, classification of benign and malignant breast cancer cells was done to identify tumors. The results indicated that the proposed method could successfully segment and classify breast tumors with an average Dice score of 90.68%, sensitivity = 98.64, specificity = 98.68, and accuracy = 98.82.


Ketersediaan

JICTRA5a-003JICTRA V15N2 October 2021Perpustakaan FT UPI YAITersedia
JICTRA5b-003JICTRA V15N2 October 2021Perpustakaan FT UPI YAITersedia
JICTRA5c-003JICTRA V15N2 October 2021Perpustakaan FT UPI YAITersedia

Informasi Detil

Judul Seri
Journal of ICT Research and Applications
No. Panggil
JICTRA V15N2 October 2021
Penerbit ITB Journal Publisher : Bandung.,
Deskripsi Fisik
hlm : 139-151
Bahasa
English
ISBN/ISSN
2337-5787
Klasifikasi
JICTRA
Tipe Isi
-
Tipe Media
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Tipe Pembawa
-
Edisi
Volume 15 Nomor 2 October 2021
Subyek
Info Detil Spesifik
-
Pernyataan Tanggungjawab

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