Das et al. (2022)
|
WBC |
SVM, KNN, ANN, CNN, RNN |
Publicly accessible datasets, generalization, complexity |
Khan et al. (2021)
|
WBC classification |
Traditional machine learning (TML) and deep learning (DL) methods |
Need for lightweight TML and DL techniques, transitioning from supervised to unsupervised learning |
SivaRao & Rao (2023)
|
WBC classification |
SegNet EfficientNet, and XGBoost |
The conventional method is time-consuming, laborious, and potentially erroneous. |
Bhatia et al. (2023)
|
RBC classification in sickle cell disease |
Customized-DCNN, SHAP, and LIME for interpretability |
Small unbalanced dataset, overlapping or clustered RBCs in some images |
Bhargavi et al. (2023)
|
White blood cell classification |
Deep-CNNs, decision tree |
Traditional methods are time-consuming and less accurate |
Anilkumar, Manoj & Sagi (2023)
|
Computer-aided diagnosis of leukemia |
SVM, CNN, k-NN, naïve Bayes, ensemble classifiers |
Lack of public datasets for chronic leukemia, Intra-observer and inter-observer variability |
Thomas & Sreejith (2018)
|
White blood cells segmentation |
K-means clustering, otsu thresholding, color-based segmentation |
Complexity and uncertainty in microscopic blood smear images make WBCs segmentation challenging |
Byndur et al. (2023)
|
Segmentation and classification WBCs |
Staining techniques, datasets, preprocessing techniques, Otsu’s method, K-means clustering, CNN, k-NN |
Manual identification of WBCs is prone to errors, complexity in microscopic blood smear images |
Raina et al. (2023)
|
Acute leukemia detection using deep learning |
Preprocessing techniques like resizing, normalization, histogram equalization |
Lack of publicly available datasets, complexity in microscopic blood smear images, variability in diagnosis depending on hematologist's experience. |
Rao & Rao (2023)
|
WBC segmentation and classification |
Pyramid scene parsing network MobilenetV3, artificial gravitational cuckoo search, ShufflenetV2 |
Challenges in preprocessing include noise, occlusion, and missing data. |
Umamaheswari & Geetha (2019)
|
Machine learning in leukemia detection |
Otsu's method, automatic thresholding, Watershed Algorithm, k-means clustering |
Lack of standard datasets for leukemia detection, Complexity in microscopic blood smear images |
More & Sugandhi (2023)
|
Leukemia detection using machine learning |
Noise removal, contrast adjustment, extraction methods for shape, texture, forest, naive bayes, SVM, and logistic regression. |
Complexity in microscopic blood smear images, Challenges in preprocessing like noise, occlusion, missing data. |
Al-Dulaimi & Makki (2023)
|
Blood cell detection and classification in CAD systems |
Preprocessing techniques like noise removal, contrast adjustment. Segmentation methods like Fuzzy C means, K-means clustering, and thresholding. |
Different staining techniques affecting segmentation, Non-uniform illumination, Variation in cell maturity stages, And morphology complexities. |
Asghar et al. (2023)
|
Medical image analysis for white blood cell classification |
Preprocessing techniques, feature extraction, CNN, R-CNN, Fast R-CNN, GAN. |
Availability of appropriate datasets, medical training of researchers for better understanding of WBC structure |
Veeraiah, Alotaibi & Subahi (2023)
|
Medical image analysis for leukemia detection |
Histogram threshold segmentation classifier (HTsC) |
Overburdening of pathologists with large data sets, variations in illumination and staining in manual setups |
Proposed Survey |
Target both WBC and RBC images |
Machine learning and deep learning |
Multidimensional research question and future directions, target audience |