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Liquid based-cytology Pap smear dataset for automated multi-class diagnosis of pre-cancerous and cervical cancer lesions

机译:液基细胞学子宫颈抹片检查数据集用于癌前和宫颈癌病变的自动多分类诊断

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摘要

While a publicly available benchmark dataset provides a base for the development of new algorithms and comparison of results, hospital-based data collected from the real-world clinical setup is also very important in AI-based medical research for automated disease diagnosis, prediction or classifications as per standard protocol. Primary data must be constantly updated so that the developed algorithms achieve as much accuracy as possible in the regional context. This dataset would support research work related to image segmentation and final classification for a complete decision support system ( ) . Liquid-based cytology (LBC) is one of the cervical screening tests. The repository consists of a total of 963 LBC images sub-divided into four sets representing the four classes: NILM, LSIL, HSIL, and SCC. It comprises pre-cancerous and cancerous lesions related to cervical cancer as per standards under The Bethesda System (TBS). The images were captured in 40x magnification using Leica ICC50 HD microscope collected with due consent from 460 patients visiting the O&G department of the public hospital with various gynaecological problems. The images were then viewed and categorized by experts of the pathology department.
机译:虽然可公开获得的基准数据集为开发新算法和比较结果提供了基础,但从现实世界中的临床设置收集的基于医院的数据在基于AI的医学研究中,对疾病的自动诊断,预测或分类也非常重要按照标准协议。必须不断更新主要数据,以使开发的算法在区域范围内达到尽可能高的准确性。该数据集将支持与图像分割和最终分类有关的研究工作,以形成完整的决策支持系统()。液基细胞学(LBC)是子宫颈筛查测试之一。该存储库包含总共963个LBC图像,这些图像又细分为代表四个类别的四个集合:NILM,LSIL,HSIL和SCC。根据Bethesda系统(TBS)的标准,它包括与宫颈癌相关的癌前和癌前病变。图像是使用Leica ICC50 HD显微镜以40倍放大倍率拍摄的,该显微镜是在460名因各种妇科问题就诊于公立医院O&G部门的患者的同意下收集的。然后由病理学部门的专家对图像进行查看和分类。

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