骨髓模型:基于人工智能的细胞分类方法和骨髓抽吸涂片恶性肿瘤检测的综合综述

IF 7.6 2区 医学 Q1 HEMATOLOGY
HemaSphere Pub Date : 2024-12-03 DOI:10.1002/hem3.70048
Tabita Ghete, Farina Kock, Martina Pontones, David Pfrang, Max Westphal, Henning Höfener, Markus Metzler
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引用次数: 0

摘要

鉴于人工智能(AI)研究在医学领域的高度普及,基于图像识别的深度学习(DL)算法的开发,如骨髓抽吸(BMA)涂片的分析,在血液学和肿瘤学领域正在迅速增加。这些模型经过训练,以确定BMA涂片的最佳区域,用于鉴别细胞计数,随后检测和分类许多细胞类型,最终可用于诊断目的。此外,人工智能能够在表型上识别基因突变。该管道有潜力在临床常规中提供准确和快速的骨髓初步分析。然而,血液病本身的复杂性给血液病的形态学自动评估提出了一些挑战。为了确保跨多个医疗中心的普遍适用性,并提供高准确性的前瞻性临床数据,人工智能模型将需要高度异构的训练数据集。本文综述了最近5年(2019-2024)发表的血液系统恶性肿瘤细胞分类和检测模型的系统分析。它提供了对这些dl辅助任务的挑战和机遇的洞察。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Models for the marrow: A comprehensive review of AI-based cell classification methods and malignancy detection in bone marrow aspirate smears

Models for the marrow: A comprehensive review of AI-based cell classification methods and malignancy detection in bone marrow aspirate smears

Given the high prevalence of artificial intelligence (AI) research in medicine, the development of deep learning (DL) algorithms based on image recognition, such as the analysis of bone marrow aspirate (BMA) smears, is rapidly increasing in the field of hematology and oncology. The models are trained to identify the optimal regions of the BMA smear for differential cell count and subsequently detect and classify a number of cell types, which can ultimately be utilized for diagnostic purposes. Moreover, AI is capable of identifying genetic mutations phenotypically. This pipeline has the potential to offer an accurate and rapid preliminary analysis of the bone marrow in the clinical routine. However, the intrinsic complexity of hematological diseases presents several challenges for the automatic morphological assessment. To ensure general applicability across multiple medical centers and to deliver high accuracy on prospective clinical data, AI models would require highly heterogeneous training datasets. This review presents a systematic analysis of models for cell classification and detection of hematological malignancies published in the last 5 years (2019–2024). It provides insight into the challenges and opportunities of these DL-assisted tasks.

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来源期刊
HemaSphere
HemaSphere Medicine-Hematology
CiteScore
6.10
自引率
4.50%
发文量
2776
审稿时长
7 weeks
期刊介绍: HemaSphere, as a publication, is dedicated to disseminating the outcomes of profoundly pertinent basic, translational, and clinical research endeavors within the field of hematology. The journal actively seeks robust studies that unveil novel discoveries with significant ramifications for hematology. In addition to original research, HemaSphere features review articles and guideline articles that furnish lucid synopses and discussions of emerging developments, along with recommendations for patient care. Positioned as the foremost resource in hematology, HemaSphere augments its offerings with specialized sections like HemaTopics and HemaPolicy. These segments engender insightful dialogues covering a spectrum of hematology-related topics, including digestible summaries of pivotal articles, updates on new therapies, deliberations on European policy matters, and other noteworthy news items within the field. Steering the course of HemaSphere are Editor in Chief Jan Cools and Deputy Editor in Chief Claire Harrison, alongside the guidance of an esteemed Editorial Board comprising international luminaries in both research and clinical realms, each representing diverse areas of hematologic expertise.
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