Shinohara Issei, Inui Atsuyuki, Murayama Masatoshi, Susuki Yosuke, Gao Qi, Chow Simon Kwoon-Ho, Mifune Yutaka, Matsumoto Tomoyuki, Kuroda Ryosuke, Goodman Stuart B
Department of Orthopaedic Surgery, Stanford University School of Medicine, Stanford, California, USA.
Department of Orthopaedic Surgery, Kobe University Graduate School of Medicine, Kobe, Hyogo, Japan.
J Biomed Mater Res B Appl Biomater. 2024 Dec;112(12):e35512. doi: 10.1002/jbm.b.35512.
Histomorphometry is an important technique in the evaluation of non-traumatic osteonecrosis of the femoral head (ONFH). Quantification of empty lacunae and pyknotic cells on histological images is the most reliable measure of ONFH pathology, yet it is time and manpower consuming. This study focused on the application of artificial intelligence (AI) technology to tissue image evaluation. The aim of this study is to establish an automated cell counting platform using YOLOv8 as an object detection model on ONFH tissue images and to evaluate and validate its accuracy. From 30 ONFH model rabbits, 270 tissue images were prepared; based on evaluations by three researchers, ground truth labels were created to classify each cell in the image into two classes (osteocytes and empty lacunae) or three classes (osteocytes, pyknotic cells, and empty lacunae). Two and three classes were then annotated on each image. Transfer learning based on annotated data (80% for training and 20% for validation) was performed using YOLOv8n and YOLOv8x with different parameters. To evaluate the detection accuracy of the training model, the mean average precision (mAP (50)) and precision-recall curve were identified. In addition, the reliability of cell counting by YOLOv8 relative to manual cell counting was evaluated by linear regression analysis using five histological images unused in previous experiments. The mAP (50) for the detection of empty lacunae was 0.868 for the YOLOv8n and 0.883 for the YOLOv8x. The mAP (50) for the three classes was 0.735 for the YOLOv8n model and 0.750 for the YOLOv8x model. The quantification of empty lacunae by automated cell counting obtained in the learning was highly correlated with the manual counting data. The development of an AI-applied automated cell counting platform will significantly reduce the time and effort of manual cell counting in histological analysis.
组织形态计量学是评估非创伤性股骨头坏死(ONFH)的一项重要技术。组织学图像上空泡和固缩细胞的定量是ONFH病理学最可靠的指标,但它耗时且耗费人力。本研究聚焦于人工智能(AI)技术在组织图像评估中的应用。本研究的目的是建立一个以YOLOv8作为目标检测模型的自动化细胞计数平台,用于ONFH组织图像,并评估和验证其准确性。从30只ONFH模型兔中制备了270张组织图像;基于三位研究人员的评估,创建了地面真值标签,将图像中的每个细胞分为两类(骨细胞和空泡)或三类(骨细胞、固缩细胞和空泡)。然后在每张图像上标注两类和三类。使用具有不同参数的YOLOv8n和YOLOv8x,基于标注数据(80%用于训练,20%用于验证)进行迁移学习。为了评估训练模型的检测准确性,确定了平均精度均值(mAP(50))和精确率-召回率曲线。此外,使用之前实验中未使用的五张组织学图像,通过线性回归分析评估了YOLOv8相对于手动细胞计数的细胞计数可靠性。YOLOv8n检测空泡的mAP(50)为0.868,YOLOv8x为0.883。YOLOv8n模型三类的mAP(50)为0.735,YOLOv8x模型为0.750。学习中通过自动化细胞计数获得的空泡定量与手动计数数据高度相关。人工智能应用的自动化细胞计数平台的开发将显著减少组织学分析中手动细胞计数的时间和精力。