A Chronological Overview of Using Deep Learning for Leukemia Detection: A Scoping Review

被引:0
作者
Rodriguez, Jorge Rubinos [1 ]
Fernandez, Santiago [1 ]
Swartz, Nicholas [1 ]
Alonge, Austin [1 ]
Bhullar, Fahad [1 ]
Betros, Trevor [1 ]
Girdler, Michael [1 ]
Patel, Neil [1 ]
Adas, Sayf [1 ]
Cervone, Adam [1 ]
Jacobs, Robin J. [1 ]
机构
[1] Nova Southeastern Univ, Dr Kiran C Patel Coll Osteopath Med, Med, Ft Lauderdale, FL 33328 USA
关键词
convolutional neural networks (cnn); flow cytometry; acute lymphoblastic leukemia (all); diagnosis; classification; detection; neural networks; deep machine learning; artificial intelligence (ai); ACUTE MYELOID-LEUKEMIA; CLASSIFICATION; RECOGNITION; NETWORKS; CELLS;
D O I
10.7759/cureus.61379
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Leukemia is a rare but fatal cancer of the blood. This cancer arises from abnormal bone marrow cells and requires prompt diagnosis for effective treatment and positive patient prognosis. Traditional diagnostic methods (e.g., microscopy, flow cytometry, and biopsy) pose challenges in both accuracy and time, demanding an inquisition on the development and use of deep learning (DL) models, such as convolutional neural networks (CNN), which could allow for a faster and more exact diagnosis. Using specific, objective criteria, DL might hold promise as a tool for physicians to diagnose leukemia. The purpose of this review was to report the relevant available published literature on using DL to diagnose leukemia. Using the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines, articles published between 2010 and 2023 were searched using Embase, Ovid MEDLINE, and Web of Science, searching the terms "leukemia" AND "deep learning" or "artificial neural network" OR "neural network" AND "diagnosis" OR "detection." After screening retrieved articles using pre-determined eligibility criteria, 20 articles were included in the final review and reported chronologically due to the nascent nature of the phenomenon. The initial studies laid the groundwork for subsequent innovations, illustrating the transition from specialized methods to more generalized approaches capitalizing on DL technologies for leukemia detection. This summary of recent DL models revealed a paradigm shift toward integrated architectures, resulting in notable enhancements in accuracy and efficiency. The continuous refinement of models and techniques, coupled with an emphasis on simplicity and efficiency, positions DL as a promising tool for leukemia detection. With the help of these neural networks, leukemia detection could be hastened, allowing for an improved longterm outlook and prognosis. Further research is warranted using real-life scenarios to confirm the suggested transformative effects DL models could have on leukemia diagnosis.
引用
收藏
页数:20
相关论文
共 40 条
  • [11] Deep learning for visual understanding: A review
    Guo, Yanming
    Liu, Yu
    Oerlemans, Ard
    Lao, Songyang
    Wu, Song
    Lew, Michael S.
    [J]. NEUROCOMPUTING, 2016, 187 : 27 - 48
  • [12] Using deep DenseNet with cyclical learning rate to classify leukocytes for leukemia identification
    Houssein, Essam H.
    Mohamed, Osama
    Samee, Nagwan Abdel
    Mahmoud, Noha F.
    Talaat, Rawan
    Al-Hejri, Aymen M.
    Al-Tam, Riyadh M.
    [J]. FRONTIERS IN ONCOLOGY, 2023, 13
  • [13] AML, ALL, and CML classification and diagnosis based on bone marrow cell morphology combined with convolutional neural network A STARD compliant diagnosis research
    Huang, Furong
    Guang, Peiwen
    Li, Fucui
    Liu, Xuewen
    Zhang, Weimin
    Huang, Wendong
    [J]. MEDICINE, 2020, 99 (45) : E23154
  • [14] Hybrid DSSCS and convolutional neural network for peripheral blood cell recognition system
    Joshi, Shivani
    Kumar, Rajiv
    Dwivedi, Avinash
    [J]. IET IMAGE PROCESSING, 2020, 14 (17) : 4450 - 4460
  • [15] Leukemia Classification using a Convolutional Neural Network of AML Images
    Kadhim, Karrar A.
    Najjar, Fallah H.
    Waad, Ali Abdulhussein
    Al-Kharsan, Ibrahim H.
    Khudhair, Zaid Nidhal
    Salim, Ali Aqeel
    [J]. MALAYSIAN JOURNAL OF FUNDAMENTAL AND APPLIED SCIENCES, 2023, 19 (03): : 306 - 312
  • [16] Kalaiselvi DT., 2020, EUR J MOL CLIN MED, V7, P1286
  • [17] Automated database-guided expert-supervised orientation for immunophenotypic diagnosis and classification of acute leukemia
    Lhermitte, L.
    Mejstrikova, E.
    van der Sluijs-Gelling, A. J.
    Grigore, G. E.
    Sedek, L.
    Bras, A. E.
    Gaipa, G.
    da Costa, E. Sobral
    Novakova, M.
    Sonneveld, E.
    Buracchi, C.
    de Sa Bacelar, T.
    Marvelde, J. G. te
    Trinquand, A.
    Asnafi, V.
    Szczepanski, T.
    Matarraz, S.
    Lopez, A.
    Vidriales, B.
    Bulsa, J.
    Hrusak, O.
    Kalina, T.
    Lecrevisse, Q.
    Ayuso, M. Martin
    Brueggemann, M.
    Verde, J.
    Fernandez, P.
    Burgos, L.
    Paiva, B.
    Pedreira, C. E.
    van Dongen, J. J. M.
    Orfao, A.
    van der Velden, V. H. J.
    [J]. LEUKEMIA, 2018, 32 (04) : 874 - 881
  • [18] On the Effectiveness of Leukocytes Classification Methods in a Real Application Scenario
    Loddo, Andrea
    Putzu, Lorenzo
    [J]. AI, 2021, 2 (03) : 394 - 412
  • [19] Human-level recognition of blast cells in acute myeloid leukaemia with convolutional neural networks
    Matek, Christian
    Schwarz, Simone
    Spiekermann, Karsten
    Marr, Carsten
    [J]. NATURE MACHINE INTELLIGENCE, 2019, 1 (11) : 538 - 544
  • [20] Computer aided detection and classification of acute lymphoblastic leukemia cell subtypes based on microscopic image analysis
    MoradiAmin, Morteza
    Memari, Ahmad
    Samadzadehaghdam, Nasser
    Kermani, Saeed
    Talebi, Ardeshir
    [J]. MICROSCOPY RESEARCH AND TECHNIQUE, 2016, 79 (10) : 908 - 916