Pengembangan Model Deep Learning Menggunakan Fine-Tuning ResNet-18 untuk Diagnosis Leukemia Akut pada Blood Smear Images
Utilizing Fine-Tuning ResNet-18 for Acute Leukemia Diagnosis from Blood Smear Images

Date
2024Author
Sinaga, Triandes
Advisor(s)
Candra, Ade
Purnama, Bedy
Metadata
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This study presents an investigation of fine-tuning ResNet-18 model for the precise
diagnosis of acute leukemia from blood smear images. Early detection of acute
leukemia is crucial for improving patient prognosis. Despite advancements in deep
learning for image recognition, the utilization of ResNet-18 for acute leukemia
diagnosis from blood smear images remains limited. Hence, this research proposed
fine-tuning ResNet-18 to enhance accuracy in acute leukemia diagnosis. Two blood
smear image datasets, Dataset RS from RSUP Haji Adam Malik Medan and
ALLIDB1 from the Università degli Studi di Milano Statale were collected. After
image preprocessing, the model underwent training using fine-tuning techniques on
the ResNet-18 architecture. Evaluation results demonstrate high accuracy, with
99.12% accuracy on the validation dataset and 99.12% on the test dataset.
Additional evaluation metrics, including precision, recall, F1-score, and AUCROC,
also exhibit excellent performance in classifying blood smear images as acute
leukemia or normal. Comparative analysis with three other architectures, namely
ResNet-18 without fine-tuning, VGG-16, and MobileNet V2, reveals that finetuning
ResNet-18 yields superior performance in terms of accuracy and stability.
This study emphasizes the significance of fine-tuning in enhancing the quality and
reliability of models for acute leukemia diagnosis.
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