Wahyuningrum Rima Tri, Yunita Indah, Bauravindah Achmad, Siradjuddin Indah Agustien, Satoto Budi Dwi, Sari Amillia Kartika, Sensusiati Anggraini Dwi
Department of Informatics Engineering, Faculty of Engineering, University of Trunojoyo Madura, Indonesia.
Department of Health, Faculty of Vocational Studies, Universitas Airlangga, Indonesia.
Data Brief. 2023 Oct 5;51:109640. doi: 10.1016/j.dib.2023.109640. eCollection 2023 Dec.
Chest X-ray images are a valuable tool for accurately and efficiently diagnosing Covid-19 with the assistance of computer technology. These images enable the detection of diseases in internal organs, particularly the lungs, by providing crucial information about the pathological state of the lungs and other internal organs and tissues. Segmentation plays an essential role in the earliest stages of disease detection through computer-assisted analysis of medical images. This method enables the extraction of significant elements from the image, facilitating the identification of relevant areas. In the subsequent stage, healthcare professionals might acquire more precise diagnosis outcomes. Deep learning plays a significant role in developing models to achieve exact and efficient diagnostic results in picture segmentation and image classification procedures. However, using deep learning models in the image segmentation process necessitates the availability of image datasets and ground truth that radiologists have validated to facilitate the training process. The dataset provided in this article comprises 292 chest X-ray images obtained from Airlangga University Hospital in Indonesia. These images are accompanied with ground truth data that has been meticulously verified by radiologists. The offered X-ray images encompass those of patients diagnosed with Covid-19, pneumonia and those representing normal conditions. The provided dataset exhibits potential utility in advancing artificial intelligence techniques for segmentation and classification procedures.
胸部X光图像是借助计算机技术准确、高效诊断新冠病毒肺炎的宝贵工具。这些图像通过提供有关肺部及其他内部器官和组织病理状态的关键信息,能够检测内部器官尤其是肺部的疾病。在通过计算机辅助分析医学图像进行疾病检测的最早阶段,分割起着至关重要的作用。这种方法能够从图像中提取重要元素,便于识别相关区域。在后续阶段,医疗保健专业人员可能会获得更精确的诊断结果。深度学习在开发模型以在图像分割和图像分类程序中实现准确高效的诊断结果方面发挥着重要作用。然而,在图像分割过程中使用深度学习模型需要有放射科医生已经验证过的图像数据集和地面真值,以促进训练过程。本文提供的数据集包含从印度尼西亚艾尔朗加大学医院获取的292张胸部X光图像。这些图像附有放射科医生精心核实过的地面真值数据。提供的X光图像包括被诊断患有新冠病毒肺炎、肺炎的患者的图像以及代表正常情况的图像。所提供的数据集在推进用于分割和分类程序的人工智能技术方面显示出潜在效用。