Document Type
Article
Source of Publication
Frontiers in Big Data
Publication Date
1-17-2025
Abstract
Leukemia is the 11th most prevalent type of cancer worldwide, with acute myeloid leukemia (AML) being the most frequent malignant blood malignancy in adults. Microscopic blood tests are the most common methods for identifying leukemia subtypes. An automated optical image-processing system using artificial intelligence (AI) has recently been applied to facilitate clinical decision-making. To evaluate the performance of all AI-based approaches for the detection and diagnosis of acute myeloid leukemia (AML). Medical databases including PubMed, Web of Science, and Scopus were searched until December 2023. We used the “metafor” and “metagen” libraries in R to analyze the different models used in the studies. Accuracy and sensitivity were the primary outcome measures. Ten studies were included in our review and meta-analysis, conducted between 2016 and 2023. Most deep-learning models have been utilized, including convolutional neural networks (CNNs). The common- and random-effects models had accuracies of 1.0000 [0.9999; 1.0001] and 0.9557 [0.9312, and 0.9802], respectively. The common and random effects models had high sensitivity values of 1.0000 and 0.8581, respectively, indicating that the machine learning models in this study can accurately detect true-positive leukemia cases. Studies have shown substantial variations in accuracy and sensitivity, as shown by the Q values and I2 statistics. Our systematic review and meta-analysis found an overall high accuracy and sensitivity of AI models in correctly identifying true-positive AML cases. Future research should focus on unifying reporting methods and performance assessment metrics of AI-based diagnostics. https://www.crd.york.ac.uk/prospero/#recordDetails, CRD42024501980.
DOI Link
ISSN
Publisher
Frontiers Media SA
Volume
7
First Page
1402926
Last Page
1402926
Disciplines
Computer Sciences | Medicine and Health Sciences
Keywords
Acute myeloid leukemia, Artificial intelligence, Microscopic blood images, Deep learning, Systematic review
Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.
Recommended Citation
Al-Obeidat, Feras; Hafez, Wael; Rashid, Asrar; Jallo, Mahir Khalil; Gador, Munier; Cherrez-Ojeda, Ivan; Simancas-Racines, Daniel (Centro de Investigación de Salud Pública y Epidemiología Clínica; and , Universidad UTE, Quito, Ecuador, , Universidad UTE, Quito, Ecuador, "Artificial intelligence for the detection of acute myeloid leukemia from microscopic blood images; a systematic review and meta-analysis" (2025). All Works. 7063.
https://zuscholars.zu.ac.ae/works/7063
Indexed in Scopus
no
Open Access
yes
Open Access Type
Gold: This publication is openly available in an open access journal/series