Rizki Firdaus Mulya Rizki’s research while affiliated with Universitas Amikom Yogyakarta and other places

What is this page?


This page lists works of an author who doesn't have a ResearchGate profile or hasn't added the works to their profile yet. It is automatically generated from public (personal) data to further our legitimate goal of comprehensive and accurate scientific recordkeeping. If you are this author and want this page removed, please let us know.

Publications (1)


Figure 1. Research Flow Diagram
Figure 2. CNN Architecture Model
Figure 5. Accuracy and loss results for fold 2
Figure 6. Accuracy and loss results for fold 3
Classification of Acute Lymphoblastic Leukemia based on White Blood Cell Images using InceptionV3 Model
  • Article
  • Full-text available

August 2023

·

178 Reads

·

8 Citations

Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)

Rizki Firdaus Mulya Rizki

·

Ema Utami

·

Dhani Ariatmanto

Acute Lymphoblastic Leukemia (ALL) is the most prevalent form of leukemia that occurs in children. Detection of ALL through white blood cell image analysis can assist in prognosis and appropriate treatment. In this study, the author proposes an approach for classifying ALL based on white blood cell images using a Convolutional Neural Network (CNN) model called InceptionV3. The dataset used in this research consists of white blood cell images collected from patients with ALL and healthy individuals. These images were obtained from The Cancer Imaging Archive (TCIA), which is a service for storing large-scale cancer medical images available to the public. During the evaluation phase, the author used training data evaluation metrics such as accuracy and loss to measure the model's performance. The research results show that the InceptionV3 model is capable of classifying white blood cell images with a high level of accuracy. This model achieves an average ALL recognition accuracy of 0.9896 with a loss of 0.031. The use of CNN models like InceptionV3 in medical image analysis has the potential to enhance the efficiency and accuracy of image-based disease diagnosis.

Download

Citations (1)


... Due to the high computational cost of training new algorithms with high predictive performance, we decided to use transfer learning approaches for nine different alreadypublished deep learning models-VGG16 [47], InceptionV3 [48], DensNet121 [49], Mo-bileNet [50], EfficientNetB0 [51], Xception [52], InceptionRNV2 [53], EfficientNetV2-L [54], and NASNet-L [55]-which have been shown to perform well on biomedical image classification [56][57][58][59][60][61][62][63][64]. These models were pretrained on the Imagenet database, and in this study, we used them as base models. ...

Reference:

Deep Learning Approaches for the Classification of Keloid Images in the Context of Malignant and Benign Skin Disorders
Classification of Acute Lymphoblastic Leukemia based on White Blood Cell Images using InceptionV3 Model

Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)