Diagnosis and typing of leukemia using a single peripheral blood cell through deep learning.

IF 5.7 2区 医学 Q1 Medicine
Cancer Science Pub Date : 2024-11-18 DOI:10.1111/cas.16374
Geng Yan, Gao Mingyang, Shi Wei, Liang Hongping, Qin Liyuan, Liu Ailan, Kong Xiaomei, Zhao Huilan, Zhao Juanjuan, Qiang Yan
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引用次数: 0

Abstract

Leukemia is highly heterogeneous, meaning that different types of leukemia require different treatments and have different prognoses. Current clinical diagnostic and typing tests are complex and time-consuming. In particular, all of these tests rely on bone marrow aspiration, which is invasive and leads to poor patient compliance, exacerbating treatment delays. Morphological analysis of peripheral blood cells (PBC) is still primarily used to distinguish between benign and malignant hematologic disorders, but it remains a challenge to diagnose and type these diseases solely by direct observation of peripheral blood(PB) smears by human experts. In this study, we apply a segmentation-based enhanced residual network that uses progressive multigranularity training with jigsaw patches. It is trained on a self-built annotated dataset of 21,208 images from 237 patients, including five types of benign white blood cells(WBCs) and eight types of leukemic cells. The network is not only able to discriminate between benign and malignant cells, but also to typify leukemia using a single peripheral blood cell. The network effectively differentiated acute promyelocytic leukemia (APL) from other types of acute myeloid leukemia (non-APL), achieving a precision rate of 89.34%, a recall rate of 97.37%, and an F1 score of 93.18% for APL. In contrast, for non-APL cases, the model achieved a precision rate of 92.86%, but a recall rate of 74.63% and an F1 score of 82.75%. In addition, the model discriminates acute lymphoblastic leukemia(ALL) with the Ph chromosome from those without. This approach could improve patient compliance and enable faster and more accurate typing of leukemias for early diagnosis and treatment to improve survival.

通过深度学习,利用单个外周血细胞对白血病进行诊断和分型。
白血病具有高度异质性,这意味着不同类型的白血病需要不同的治疗方法,预后也不尽相同。目前的临床诊断和分型测试既复杂又耗时。尤其是,所有这些检测都依赖于骨髓抽吸,而骨髓抽吸是侵入性的,会导致患者依从性差,加剧治疗延误。外周血细胞(PBC)的形态学分析仍主要用于区分良性和恶性血液病,但仅靠人类专家直接观察外周血涂片来诊断和分型这些疾病仍是一项挑战。在本研究中,我们应用了基于分割的增强残差网络,该网络使用拼图补丁进行渐进式多粒度训练。它在一个自建的标注数据集上进行训练,该数据集包含来自 237 名患者的 21 208 张图像,其中包括五种良性白细胞和八种白血病细胞。该网络不仅能区分良性和恶性细胞,还能利用单个外周血细胞对白血病进行分型。该网络能有效区分急性早幼粒细胞白血病(APL)和其他类型的急性髓性白血病(非 APL),APL 的精确率为 89.34%,召回率为 97.37%,F1 得分为 93.18%。相反,对于非 APL 病例,该模型的精确率为 92.86%,但召回率为 74.63%,F1 得分为 82.75%。此外,该模型还能区分带有 Ph 染色体的急性淋巴细胞白血病(ALL)和不带有 Ph 染色体的急性淋巴细胞白血病(ALL)。这种方法可以提高患者的依从性,并能更快、更准确地对白血病进行分型,以便早期诊断和治疗,从而提高生存率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Cancer Science
Cancer Science ONCOLOGY-
CiteScore
9.90
自引率
3.50%
发文量
406
审稿时长
17 weeks
期刊介绍: Cancer Science (formerly Japanese Journal of Cancer Research) is a monthly publication of the Japanese Cancer Association. First published in 1907, the Journal continues to publish original articles, editorials, and letters to the editor, describing original research in the fields of basic, translational and clinical cancer research. The Journal also accepts reports and case reports. Cancer Science aims to present highly significant and timely findings that have a significant clinical impact on oncologists or that may alter the disease concept of a tumor. The Journal will not publish case reports that describe a rare tumor or condition without new findings to be added to previous reports; combination of different tumors without new suggestive findings for oncological research; remarkable effect of already known treatments without suggestive data to explain the exceptional result. Review articles may also be published.
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