Automatic classification and segmentation of blast cells using deep transfer learning and active contours

IntroductionAcute lymphoblastic leukemia (ALL) presents a formidable challenge in hematological malignancies, necessitating swift and precise diagnostic techniques for effective intervention. The conventional manual microscopy of blood smears, although widely practiced, suffers from significant limi...

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Published in:INTERNATIONAL JOURNAL OF LABORATORY HEMATOLOGY
Main Authors: Ametefe, Divine Senanu; Sarnin, Suzi Seroja; Ali, Darmawaty Mohd; Ametefe, George Dzorgbenya; John, Dah; Aliu, Abdulmalik Adozuka; Zoreno, Zadok
Format: Article; Early Access
Language:English
Published: WILEY 2024
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001217192100001
author Ametefe
Divine Senanu; Sarnin
Suzi Seroja; Ali
Darmawaty Mohd; Ametefe
George Dzorgbenya; John
Dah; Aliu
Abdulmalik Adozuka; Zoreno
Zadok
spellingShingle Ametefe
Divine Senanu; Sarnin
Suzi Seroja; Ali
Darmawaty Mohd; Ametefe
George Dzorgbenya; John
Dah; Aliu
Abdulmalik Adozuka; Zoreno
Zadok
Automatic classification and segmentation of blast cells using deep transfer learning and active contours
Hematology
author_facet Ametefe
Divine Senanu; Sarnin
Suzi Seroja; Ali
Darmawaty Mohd; Ametefe
George Dzorgbenya; John
Dah; Aliu
Abdulmalik Adozuka; Zoreno
Zadok
author_sort Ametefe
spelling Ametefe, Divine Senanu; Sarnin, Suzi Seroja; Ali, Darmawaty Mohd; Ametefe, George Dzorgbenya; John, Dah; Aliu, Abdulmalik Adozuka; Zoreno, Zadok
Automatic classification and segmentation of blast cells using deep transfer learning and active contours
INTERNATIONAL JOURNAL OF LABORATORY HEMATOLOGY
English
Article; Early Access
IntroductionAcute lymphoblastic leukemia (ALL) presents a formidable challenge in hematological malignancies, necessitating swift and precise diagnostic techniques for effective intervention. The conventional manual microscopy of blood smears, although widely practiced, suffers from significant limitations including labor-intensity and susceptibility to human error, particularly in distinguishing the subtle differences between normal and leukemic cells.MethodsTo overcome these limitations, our research introduces the ALLDet classifier, an innovative tool employing deep transfer learning for the automated analysis and categorization of ALL from White Blood Cell (WBC) nuclei images. Our investigation encompassed the evaluation of nine state-of-the-art pre-trained convolutional neural network (CNN) models, namely VGG16, VGG19, ResNet50, ResNet101, DenseNet121, DenseNet201, Xception, MobileNet, and EfficientNetB3. We augmented this approach by incorporating a sophisticated contour-based segmentation technique, derived from the Chan-Vese model, aimed at the meticulous segmentation of blast cell nuclei in blood smear images, thereby enhancing the accuracy of our analysis.ResultsThe empirical assessment of these methodologies underscored the superior performance of the EfficientNetB3 model, which demonstrated exceptional metrics: a recall specificity of 98.5%, precision of 95.86%, F1-score of 97.16%, and an overall accuracy rate of 97.13%. The Chan-Vese model's adaptability to the irregular shapes of blast cells and its noise-resistant segmentation capability were key to capturing the complex morphological changes essential for accurate segmentation.ConclusionThe combined application of the ALLDet classifier, powered by EfficientNetB3, with our advanced segmentation approach, emerges as a formidable advancement in the early detection and accurate diagnosis of ALL. This breakthrough not only signifies a pivotal leap in leukemia diagnostic methodologies but also holds the promise of significantly elevating the standards of patient care through the provision of timely and precise diagnoses. The implications of this study extend beyond immediate clinical utility, paving the way for future research to further refine and enhance the capabilities of artificial intelligence in medical diagnostics.
WILEY
1751-5521
1751-553X
2024


10.1111/ijlh.14305
Hematology

WOS:001217192100001
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001217192100001
title Automatic classification and segmentation of blast cells using deep transfer learning and active contours
title_short Automatic classification and segmentation of blast cells using deep transfer learning and active contours
title_full Automatic classification and segmentation of blast cells using deep transfer learning and active contours
title_fullStr Automatic classification and segmentation of blast cells using deep transfer learning and active contours
title_full_unstemmed Automatic classification and segmentation of blast cells using deep transfer learning and active contours
title_sort Automatic classification and segmentation of blast cells using deep transfer learning and active contours
container_title INTERNATIONAL JOURNAL OF LABORATORY HEMATOLOGY
language English
format Article; Early Access
description IntroductionAcute lymphoblastic leukemia (ALL) presents a formidable challenge in hematological malignancies, necessitating swift and precise diagnostic techniques for effective intervention. The conventional manual microscopy of blood smears, although widely practiced, suffers from significant limitations including labor-intensity and susceptibility to human error, particularly in distinguishing the subtle differences between normal and leukemic cells.MethodsTo overcome these limitations, our research introduces the ALLDet classifier, an innovative tool employing deep transfer learning for the automated analysis and categorization of ALL from White Blood Cell (WBC) nuclei images. Our investigation encompassed the evaluation of nine state-of-the-art pre-trained convolutional neural network (CNN) models, namely VGG16, VGG19, ResNet50, ResNet101, DenseNet121, DenseNet201, Xception, MobileNet, and EfficientNetB3. We augmented this approach by incorporating a sophisticated contour-based segmentation technique, derived from the Chan-Vese model, aimed at the meticulous segmentation of blast cell nuclei in blood smear images, thereby enhancing the accuracy of our analysis.ResultsThe empirical assessment of these methodologies underscored the superior performance of the EfficientNetB3 model, which demonstrated exceptional metrics: a recall specificity of 98.5%, precision of 95.86%, F1-score of 97.16%, and an overall accuracy rate of 97.13%. The Chan-Vese model's adaptability to the irregular shapes of blast cells and its noise-resistant segmentation capability were key to capturing the complex morphological changes essential for accurate segmentation.ConclusionThe combined application of the ALLDet classifier, powered by EfficientNetB3, with our advanced segmentation approach, emerges as a formidable advancement in the early detection and accurate diagnosis of ALL. This breakthrough not only signifies a pivotal leap in leukemia diagnostic methodologies but also holds the promise of significantly elevating the standards of patient care through the provision of timely and precise diagnoses. The implications of this study extend beyond immediate clinical utility, paving the way for future research to further refine and enhance the capabilities of artificial intelligence in medical diagnostics.
publisher WILEY
issn 1751-5521
1751-553X
publishDate 2024
container_volume
container_issue
doi_str_mv 10.1111/ijlh.14305
topic Hematology
topic_facet Hematology
accesstype
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url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001217192100001
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