Nizar AhmedAltuğ YiğitZerrin IşıkAdil Alpkoçak
Leukemia is a fatal cancer and has two main types: Acute and chronic. Each type has two more subtypes: Lymphoid and myeloid. Hence, in total, there are four subtypes of leukemia. This study proposes a new approach for diagnosis of all subtypes of leukemia from microscopic blood cell images using convolutional neural networks (CNN), which requires a large training data set. Therefore, we also investigated the effects of data augmentation for an increasing number of training samples synthetically. We used two publicly available leukemia data sources: ALL-IDB and ASH Image Bank. Next, we applied seven different image transformation techniques as data augmentation. We designed a CNN architecture capable of recognizing all subtypes of leukemia. Besides, we also explored other well-known machine learning algorithms such as naive Bayes, support vector machine, k-nearest neighbor, and decision tree. To evaluate our approach, we set up a set of experiments and used 5-fold cross-validation. The results we obtained from experiments showed that our CNN model performance has 88.25% and 81.74% accuracy, in leukemia versus healthy and multi-class classification of all subtypes, respectively. Finally, we also showed that the CNN model has a better performance than other well-known machine learning algorithms.
Nidhi SaxenaRochan SharmaKarishma JoshiHukum Singh Rana
Abel WorkuTimothy KwaMohammed Aliy MohammedGelan Ayana ZewdieGizeaddis Lamesgin Simegn
Abel Worku TessemaMohammed Aliy MohammedGizeaddis Lamesgin SimegnTimothy Kwa
Dongxu YangHongdong ZhaoTiecheng HanQing KangJuncheng MaHaiyan Lu