BoMaCNet:用于检测骨髓细胞细胞学的卷积神经网络模型

Abrar Shahriar Abeed, Asif Atiq, Afra Antara Anjum, Azher Ahmed Efat, Dewan Ziaul Karim
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引用次数: 2

摘要

骨髓负责创造人体中所有不同类型的血细胞,并帮助我们识别各种类型的骨髓细胞疾病。因此,正确识别和分类不同类型的细胞是必要的。进行不同的病理和血液检查可能需要一些时间。应用深度神经网络(DNN)进行血细胞检测使我们能够快速分类呼叫类型,这进一步使我们能够同时从同一样本中识别多种类型的血细胞。这不仅为我们节省了细胞分类所需的时间,而且还消除了人为错误的可能性,因为自动化系统可以提供比血液学家或病理学家更精确和即时的结果。机器学习算法能够很容易地解决这些问题。基于此,我们提出了一种基于cnn的BoMaCNet架构,能够快速准确地检测和分类骨髓细胞图像。我们的CNN模型总共需要96000张图像,然后分为训练、测试和验证。六种常见类型的骨髓细胞(人造细胞、母细胞、红母细胞、淋巴细胞、分节中性粒细胞和早幼粒细胞)被选择用于本研究。我们的整个数据集被分成三部分,80%用于训练,10%用于验证,10%用于测试。为了进行测试,每个标签使用了1600个实例。我们的模型能够在使用的数据集上产生迄今为止最高的结果,达到95.71%的总体精度。训练准确率为95.71%,验证准确率为93.06%,平均F-1得分为0.93,我们取得了优异的成绩。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BoMaCNet: A Convolutional Neural Network Model to Detect Bone Marrow Cell Cytology
Bone Marrow is responsible for the creation of all the different types of blood cells in the human body and helps us to identify various types of bone marrow cell disorders. Therefore it is necessary to correctly identify and classify the different types of cells. Conducting different pathological and blood tests may take some time. Applying a Deep Neural Network (DNN) for blood cell detection allows us to quickly classify the call types, which further enables us to identify multiple types of blood cells simultaneously from the same sample. Not only does this save us the time needed for cell classification but also removes the possibility of human error as an automated system can deliver more precise and instantaneous results than a hematologist or pathologist. Machine Learning algorithms are capable of solving these problems quite easily. With that in mind, we propose a CNN-based architecture named BoMaCNet, which is capable of detecting and classifying bone marrow cell images quickly and accurately. Our CNN model takes 96000 images in total, which are then split into training, testing, and validation. Six common types of bone marrow cells (Artefact, Blast, Erythroblast, Lymphocyte, Segmented Neutrophil and Promyelocyte) are chosen for this research. Our entire data set was split into three parts 80% was kept for training, 10% was kept for validation and 10% was used for testing. For testing, 1600 instances of each label were used. Our model was able to produce the highest by far results on the used dataset by achieving an overall accuracy of 95.71%. With 95.71% accuracy in training and 93.06% accuracy in validation along with achieving an impressive mean average F-1 score of 0.93, we were able to achieve exceptional results.
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