Department of Hematology, The First Affiliated Hospital, and College of Clinical Medicine of Henan University of Science and Technology, Luoyang, 471003, China.
Department of Medical Record Management, The First Affiliated Hospital, and College of Clinical Medicine of Henan University of Science and Technology, Luoyang, 471003, China.
Comput Biol Med. 2022 Aug;147:105741. doi: 10.1016/j.compbiomed.2022.105741. Epub 2022 Jun 15.
Classification of acute myeloid leukemia (AML) relies on manual analysis of bone marrow or peripheral blood smear images. We aimed to construct a machine learning model for automatic classification of AML-M1 and M2 subtypes in bone marrow smear images.
Bone marrow smear images of AML patients were extracted from the Cancer Imaging Archive (TCIA) open database. Classification criteria of AML subtypes were based on the French-American-British (FAB) classification system. Random forest method and broad learning system (BLS) were used to develop the classification model. Morphological features, radiomics features, and clinical features were extracted. The performance of the classification model was evaluated by calculating accuracy, precision, recall, F1-score, and area under the curve (AUC). A total of 50 bone marrow smear images (AML-M1, 31 cases; AML-M2, 19 cases) with 500 slices were included in this study.
A total of 43 morphological features, 276 radiomics features, and 1 clinical feature were extracted. Finally, 9 variables including 2 morphological features, 6 radiomics features, and 1 clinical feature were selected into the classification model. The best classification performance was observed in the random forest model with 9 variables, with the average accuracy, AUC, F1-score, recall, and precision of the model being 0.998 ± 0.003, 0.998 ± 0.004, 0.998 ± 0.004, 0.996 ± 0.009, and 1 ± 0, respectively.
The random forest model performed well for the classification of AML-M1 and M2, which may provide a tool for clinicians to classify AML-M1 and M2.
急性髓系白血病(AML)的分类依赖于对骨髓或外周血涂片图像的手动分析。我们旨在构建一个用于自动分类骨髓涂片图像中 AML-M1 和 M2 亚型的机器学习模型。
从癌症成像档案(TCIA)开放数据库中提取 AML 患者的骨髓涂片图像。AML 亚型的分类标准基于法国-美国-英国(FAB)分类系统。使用随机森林方法和广义学习系统(BLS)开发分类模型。提取形态学特征、放射组学特征和临床特征。通过计算准确性、精确性、召回率、F1 分数和曲线下面积(AUC)来评估分类模型的性能。本研究共纳入 50 张骨髓涂片(AML-M1,31 例;AML-M2,19 例),共 500 张切片。
共提取 43 个形态学特征、276 个放射组学特征和 1 个临床特征。最后,将 9 个变量(包括 2 个形态学特征、6 个放射组学特征和 1 个临床特征)选入分类模型。在具有 9 个变量的随机森林模型中观察到最佳分类性能,模型的平均准确率、AUC、F1 分数、召回率和精确率分别为 0.998±0.003、0.998±0.004、0.998±0.004、0.996±0.009 和 1±0。
随机森林模型在 AML-M1 和 M2 的分类中表现良好,这可能为临床医生提供一种分类 AML-M1 和 M2 的工具。