School of Mathematics and Physics, Wuhan Institute of Technology, Wuhan 430205, China.
Sensors (Basel). 2023 Sep 3;23(17):7640. doi: 10.3390/s23177640.
The detection and classification of bone marrow (BM) cells is a critical cornerstone for hematology diagnosis. However, the low accuracy caused by few BM-cell data samples, subtle difference between classes, and small target size, pathologists still need to perform thousands of manual identifications daily. To address the above issues, we propose an improved BM-cell-detection algorithm in this paper, called YOLOv7-CTA. Firstly, to enhance the model's sensitivity to fine-grained features, we design a new module called CoTLAN in the backbone network to enable the model to perform long-term modeling between target feature information. Then, in order to cooperate with the CoTLAN module to pay more attention to the features in the area to be detected, we integrate the coordinate attention (CoordAtt) module between the CoTLAN modules to improve the model's attention to small target features. Finally, we cluster the target boxes of the BM cell dataset based on K-means++ to generate more suitable anchor boxes, which accelerates the convergence of the improved model. In addition, in order to solve the imbalance between positive and negative samples in BM-cell pictures, we use the Focal loss function to replace the multi-class cross entropy. Experimental results demonstrate that the best mean average precision (mAP) of the proposed model reaches 88.6%, which is an improvement of 12.9%, 8.3%, and 6.7% compared with that of the Faster R-CNN model, YOLOv5l model, and YOLOv7 model, respectively. This verifies the effectiveness and superiority of the YOLOv7-CTA model in BM-cell-detection tasks.
骨髓(BM)细胞的检测和分类是血液学诊断的关键基石。然而,由于 BM 细胞数据样本较少、类别之间的细微差异以及目标尺寸较小,导致准确率较低,病理学家仍然每天需要进行数千次的手动鉴定。为了解决上述问题,我们在本文中提出了一种改进的 BM 细胞检测算法,称为 YOLOv7-CTA。首先,为了增强模型对细粒度特征的敏感性,我们在骨干网络中设计了一个名为 CoTLAN 的新模块,使模型能够在目标特征信息之间进行长期建模。然后,为了与 CoTLAN 模块配合,更多地关注待检测区域的特征,我们在 CoTLAN 模块之间集成了坐标注意力(CoordAtt)模块,以提高模型对小目标特征的注意力。最后,我们根据 K-means++对 BM 细胞数据集的目标框进行聚类,生成更合适的锚框,从而加速改进模型的收敛。此外,为了解决 BM 细胞图像中正负样本不平衡的问题,我们使用焦点损失函数替代多类别交叉熵。实验结果表明,所提出模型的最佳平均精度(mAP)达到 88.6%,与 Faster R-CNN 模型、YOLOv5l 模型和 YOLOv7 模型相比,分别提高了 12.9%、8.3%和 6.7%。这验证了 YOLOv7-CTA 模型在 BM 细胞检测任务中的有效性和优越性。