Analysis of Urine Sediment Images for Detection and Classification of Cells

Hilal Atici, H. Koçer, A. Sivrikaya, M. Dağlı
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Abstract

Urine sediment tests are important in the diagnosis of abnormal diseases related to the urinary tract. The formation of cells such as red blood cells and white blood cells in the urine of patients is important for the diagnosis of the disease. Therefore, cells need to be fully identified in clinical urinalysis. Urinalysis with human eyes; Since it is subjective, time consuming and causing errors, methods have been developed to automate microscopic analysis with the help of computer and software systems. In this study, the YOLO-v7 algorithm, which gives successful results in image processing technology, was used as a method and model. The dataset used in the study was created by using microscopic images of urine sediment taken from the Biochemistry Laboratory of the Faculty of Medicine, Selcuk University. Seven different cell segmentation and classification studies have been carried out, including WBC, RBC, WBCC, Epithelial, Flat Epithelial, Mucs and Bubbles, which have clinical value for the diagnosis of the disease. Experimental studies were carried out with the YOLO-v7 algorithm and the results were presented. The contributions of this study can be summarized as follows. (1) In this study, which is proposed for segmentation of cells on the urine cell images in the Urine Sediment dataset, for the experimental studies carried out with the YOLO model, whose performance was evaluated; Precision, Recall, mAP(0.5) and F1-Score(%) segmentation performance metrics were calculated as 0.384, 0.759, 0.432 and 0.510, respectively. (2) A computer-aided support system to assist physicians in segmenting urine cells is presented as a secondary tool. Classification accuracy for WBC, RBC, WBCC, Epithelial, Flat Epithelial, Mucs and Bubbles cells was calculated as 0.78, 0.94, 0.90, 0.57, 0.92, 0.68 and 0.97, respectively. A mean classification success of 0.822 was achieved for all classes. Thus, it has been seen that the Yolov7 model can be used by experts as a tool for recognizing cells in the urine sediment. As a result, it has been shown that suitable deep learning models can be used to recognize the biometric properties of urinary sediment cells. With the model created using deep learning libraries, urine sediment cells can be easily classified, and it is possible to define many different cells if there is a dataset with sufficient number of images.
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用于细胞检测和分类的尿液沉积物图像分析
尿沉渣试验在诊断与泌尿道有关的异常疾病中具有重要意义。患者尿液中红细胞和白细胞等细胞的形成对疾病的诊断很重要。因此,在临床尿液分析中需要充分识别细胞。人眼尿液分析;由于它是主观的、耗时的和容易引起错误的,人们已经开发出在计算机和软件系统的帮助下使显微分析自动化的方法。本研究采用在图像处理技术上取得成功的YOLO-v7算法作为方法和模型。研究中使用的数据集是通过使用从塞尔丘克大学医学院生物化学实验室采集的尿液沉积物的显微图像创建的。开展了WBC、RBC、WBCC、Epithelial、Flat Epithelial、Mucs和Bubbles等7种不同的细胞分割和分类研究,对本病的诊断具有临床价值。利用YOLO-v7算法进行了实验研究,并给出了实验结果。本研究的贡献可以总结如下。(1)本研究提出对尿沉积物数据集中的尿细胞图像进行细胞分割,对YOLO模型进行了实验研究,并对其性能进行了评价;精密度、召回率、mAP(0.5)和F1-Score(%)分割性能指标分别为0.384、0.759、0.432和0.510。(2)辅助医生分割尿细胞的计算机辅助支持系统作为辅助工具。WBC、RBC、WBCC、Epithelial、Flat Epithelial、Mucs和Bubbles细胞的分类准确率分别为0.78、0.94、0.90、0.57、0.92、0.68和0.97。所有类别的平均分类成功率为0.822。因此,已经看到Yolov7模型可以被专家用作识别尿液沉积物中细胞的工具。因此,研究表明,合适的深度学习模型可以用于识别尿沉积物细胞的生物特征。使用深度学习库创建的模型可以很容易地对尿液沉积物细胞进行分类,如果有一个具有足够数量图像的数据集,则可以定义许多不同的细胞。
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