需申請審核

CBIS-DDSM

Breast Cancer

This CBIS-DDSM (Curated Breast Imaging Subset of DDSM) is an updated and standardized version of the Digital Database for Screening Mammography (DDSM). The DDSM is a database of 2,620 scanned film mammography studies. It contains normal, benign, and malignant cases with verified pathology information. The scale of the database along with ground truth validation makes the DDSM a useful tool in the development and testing of decision support systems. The CBIS-DDSM collection includes a subset of the DDSM data selected and curated by a trained mammographer. The images have been decompressed and converted to DICOM format. Updated ROI segmentation and bounding boxes, and pathologic diagnosis for training data are also included. Published research results from work in developing decision support systems in mammography are difficult to replicate due to the lack of a standard evaluation data set; most computer-aided diagnosis (CADx) and detection (CADe) algorithms for breast cancer in mammography are evaluated on private data sets or on unspecified subsets of public databases. Few well-curated public datasets have been provided for the mammography community. These include the DDSM, the Mammographic Imaging Analysis Society (MIAS) database, and the Image Retrieval in Medical Applications (IRMA) project. Although these public data sets are useful, they are limited in terms of data set size and accessibility.

For example, most researchers using the DDSM do not leverage all its images for a variety of historical reasons. When the database was released in 1997, computational resources to process hundreds or thousands of images were not widely available. Additionally, the DDSM images are saved in non-standard compression files that require the use of decompression code that has not been updated or maintained for modern computers. Finally, the ROI annotations for the abnormalities in the DDSM were provided to indicate a general position of lesions, but not a precise segmentation for them. Therefore, many researchers must implement segmentation algorithms for accurate feature extraction. This causes an inability to directly compare the performance of methods or to replicate prior results. The CBIS-DDSM collection addresses that challenge by publicly releasing an curated and standardized version of the DDSM for evaluation of future CADx and CADe systems (sometimes referred to generally as CAD) research in mammography.

For scientific inquiries about this dataset, please contact Dr. Daniel Rubin, Department of Biomedical Data Science, Radiology, and Medicine, Stanford University School of Medicine (dlrubin@stanford.edu). A manuscript describing the dataset in detail is under review in Scientific Data and will be linked here when published.

資料與資源

額外的資訊

欄位
最後更新 十二月 3, 2019, 11:32 (CST)
建立 五月 30, 2018, 16:17 (CST)

推薦資料集:


  • 高雄市房屋稅開徵概況--按納稅義務人性別戶數分

    付費方式 免費
    更新頻率 不定期
    房屋稅開徵概況--按納稅義務人性別戶數分
  • 水資源作業基金預算案

    付費方式 免費
    更新頻率 不定期
    本資料集經濟部水利署「水資源作業基金預算案」(WaterResourcesOperationFund)...
  • 全國賦稅預算數-按稅目別分

    付費方式 免費
    更新頻率 不定期
    全國各稅捐稽徵機關直接徵起或委託代徵各項賦稅收入之預算數。
  • 鐵道工程願景館資訊

    付費方式 免費
    更新頻率 不定期
    本資料主要為交通部鐵路改建工程局成立之各鐵道工程願景館展覽資訊。
  • 台灣中油股份有限公司_國光牌海運機油 ( Marilube Oil )產品說明書

    付費方式 免費
    更新頻率 不定期
    國光牌海運機油 ( Marilube Oil )產品說明書提供海運輪船柴油機、透平電動機、蒸汽透平機、蒸汽機、雜項船舶、漁船潤滑用油之選擇和特性描述。