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Journal : Indonesian Journal of Electrical Engineering and Computer Science

Classification of endometrial adenocarcinoma using histopathology images with extreme learning machine method Rulaningtyas, Riries; Rahaju, Anny Setijo; Dewi, Rosa Amalia; Hanifah, Ummi; Purwanti, Endah; Rahma, Osmalina Nur; Katherine, Katherine
Indonesian Journal of Electrical Engineering and Computer Science Vol 36, No 2: November 2024
Publisher : Institute of Advanced Engineering and Science

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.11591/ijeecs.v36.i2.pp961-971

Abstract

As many as 70-80% of endometrial cancer cases are endometrial adenocarcinoma. Histopathological assessment is based on the degree of differentiation, into well-differentiated, moderate-differentiated, and poorly-differentiated. Management and prognosis differ between grades, so differential diagnosis in determining the degree of tumor differentiation is crucial for appropriate treatment decisions. Histopathological image analysis offers detailed diagnostic results, but manual analysis by a pathologist is very complicated, error-prone, quite tedious, and time-consuming. Therefore, an automatic diagnostic system is needed to assist pathologists in grading the tumor. This research aims to determine the degree of differentiation of endometrial adenocarcinoma based on histopathological images. The extreme learning machine (ELM) method performs image classification with gray level run long matrix (GLRLM) features and a combination of local binary pattern (LBP)-GLRLM features as input. Experimental results show that the ELM model can achieve satisfactory performance. Training accuracy, testing accuracy, and model precision with GLRLM features were 97.13%, 91.33%, and 80% and combined LBPGLRLM features were 91.03%, 71.33%, and 100%. Overall, the model created can determine the degree of tumor differentiation and is useful in providing a second opinion for pathologists.
Co-Authors Abdurrahman Hasyim Asy’ari Alphania Rahniayu Aniek Meidi, Aniek Aniek Meidy Utami Ari Wanda, Dewi Sartika Ariadna Anggi Pasang Ariani, Grace Arifa Mustika Arifa Mustika Aulia Nur Fadila Budi Harjanto Budi Harjanto Dewi Sartika A. W. Dewi, Rosa Amalia DWI SURYANTO DYAH FAUZIAH, DYAH Eddie Saputra Ferdinant Martinus Djawa Fira Soraya Gondo Mastutik HERAWATI, LILIK Heriyawati, Heriyawati Heryanto Heryanto Heryanto Heryanto I'tishom, Reny Ilmiah, Khafidhotul Imam Susilo Isnin Anang Marhana Izzan Khalidah Binti Muhamad I’tishom, Reny Katherine Kho Khafidhotul Ilmiah Khafidhotul Ilmiah Krismaningrum, Veronika Intan Kusumastuti , Etty Hary Kusumastuti, Etty Hari KUSUMASTUTI, ETTY HARY Leonita Agustin Hambalie Linda Dewanti Mas`udi, Achmad Fayyad Naibaho, Ardy Hamonangan Nila Kurniasari Nila Kurniasari Novalia Chumaladewi Guntarno Nur Arfian, Nur Octavianda, Yohana Osmalina Nur Rahma PUNGKY MULAWARDHANA, PUNGKY Qonitatillah, Ana Qorib, Mohammad Fathul Rahmi Alia Rahmi Alia Rahmi Alia, Rahmi Renny I’tishom Reza Wangsanagara Ridholia Ridholia Ridholia Ridholia, Ridholia Rifatus Solicha Riries Rulaningtyas Roostantia Indrawati S.Pd. M Kes I Ketut Sudiana . Salman Aziz, Muhamad Abi Sari, Aditya Sita Sheilla Matheos Sita Sari, Aditya Sjahjenny Mustokoweni, Sjahjenny Soetojo Soetojo Solly Aryza Suhartono Taat Putra Tarmono Djojodimedjo Tri Wulanhandarini Trianto, Heru Fajar Tuti Andayani Ummi Hanifah Vicky Sumarki Waasilah, Hadiyyatan Willy Sandhika Winarno Winarno Wira Santoso Ongko Wiratama, Priangga Adi Yohana Octavianda