Renting Liu, Chunhui Ren, Miaomiao Fu, Z. Chu, Jiuchuan Guo
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In this paper, we carried out experiments for platelet detection based on commonly used object detection models, such as Single Shot Multibox Detector (SSD), RetinaNet, Faster_rcnn, and You Only Look Once_v3 (YOLO_v3). Compared with the other three models, YOLO_v3 can detect platelets more effectively. And we proposed three ideas for improvement based on YOLO_v3. Our study demonstrated that YOLO_v3 can be adopted for platelet detection accurately and in real time. We also implemented YOLO_v3 with multiscale fusion, YOLO_v3 with anchor box clustering, and YOLO_v3 with match parameter on our self-created dataset and, respectively, achieved 1.8% higher average precision (AP), 2.38% higher AP, and 2.05% higher AP than YOLO_v3. 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We also implemented YOLO_v3 with multiscale fusion, YOLO_v3 with anchor box clustering, and YOLO_v3 with match parameter on our self-created dataset and, respectively, achieved 1.8% higher average precision (AP), 2.38% higher AP, and 2.05% higher AP than YOLO_v3. 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引用次数: 7
摘要
血小板的检测与计数在医学领域,特别是在血液常规检查中具有重要的作用,可用于判断血液状况和诊断相关疾病。因此,血小板检测对肝脏相关疾病等相关血液疾病的诊断具有重要价值。血液分析仪和视觉显微镜计数被广泛用于血小板检测,但实验过程耗时近20分钟,只能由专业医生完成。近年来,人工智能的技术突破使得通过深度学习方法检测红细胞成为可能。然而,由于血小板数据集的不可访问性和血小板体积小,基于深度学习的血小板检测研究几乎不存在。本文基于常用的目标检测模型(Single Shot Multibox Detector, SSD)、RetinaNet、Faster_rcnn、You Only Look Once_v3 (YOLO_v3)进行了血小板检测实验。与其他三种模型相比,YOLO_v3能更有效地检测血小板。并提出了基于YOLO_v3的三个改进思路。我们的研究表明,YOLO_v3可以准确、实时地用于血小板检测。在自建数据集上实现了基于多尺度融合的YOLO_v3、基于锚盒聚类的YOLO_v3和基于匹配参数的YOLO_v3,分别比YOLO_v3提高了1.8%、2.38%和2.05%的平均精度。综合实验表明,采用改进思路的YOLO_v3在血小板检测方面优于YOLO_v3。
Platelet detection and counting play a greatly significant role in medical field, especially in routine blood tests which can be used to judge blood status and diagnose related diseases. Therefore, platelet detection is valuable for diagnosing related blood diseases such as liver-related diseases. Blood analyzers and visual microscope counting were widely used for platelet detection, but the experimental procedure took nearly 20 minutes and can only be performed by a professional doctor. In recent years, technological breakthroughs in artificial intelligence have made it possible to detect red blood cells through deep learning methods. However, due to the inaccessibility of platelet datasets and the small size of platelets, deep learning-based platelet detection studies are almost nonexistent. In this paper, we carried out experiments for platelet detection based on commonly used object detection models, such as Single Shot Multibox Detector (SSD), RetinaNet, Faster_rcnn, and You Only Look Once_v3 (YOLO_v3). Compared with the other three models, YOLO_v3 can detect platelets more effectively. And we proposed three ideas for improvement based on YOLO_v3. Our study demonstrated that YOLO_v3 can be adopted for platelet detection accurately and in real time. We also implemented YOLO_v3 with multiscale fusion, YOLO_v3 with anchor box clustering, and YOLO_v3 with match parameter on our self-created dataset and, respectively, achieved 1.8% higher average precision (AP), 2.38% higher AP, and 2.05% higher AP than YOLO_v3. The comprehensive experiments revealed that YOLO_v3 with the improved ideas performs better in platelet detection than YOLO_v3.