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    • 1. 发明申请
    • Automatic Learning of Image Features to Predict Disease
    • 自动学习图像特征预测疾病
    • US20090310836A1
    • 2009-12-17
    • US12427974
    • 2009-04-22
    • Arun KrishnanXiang ZhouMartin HuberMichael KelmJoerg Freund
    • Arun KrishnanXiang ZhouMartin HuberMichael KelmJoerg Freund
    • G06K9/62G06K9/00
    • G06T7/11G06F19/00G06T7/0012G06T2207/20081G16H50/70
    • A method for training a computer system for automatic detection of regions of interest includes receiving patient records. For each of the received patient records a text field and a medical image are identified from within the patient record and the medical image is automatically segmented to identify a structure of interest. The text field is searched for one or more keywords indicative of a particular abnormality associated with the structure of interest. The medical image is added to a grouping representing the particular abnormality when the text field indicates that the patient has the particular abnormality and the medical image is added to a grouping representing the absence of the particular abnormality when the text field does not indicate that the patient has the particular abnormality. The groupings of medical images are used to automatically train a computer system for the subsequent detection of the particular abnormality.
    • 用于训练用于感兴趣区域的自动检测的计算机系统的方法包括接收患者记录。 对于每个接收到的患者记录,从患者记录中识别文本字段和医学图像,并且医疗图像被自动分段以识别感兴趣的结构。 搜索文本字段以查找指示与感兴趣结构相关联的特定异常的一个或多个关键字。 当文本字段指示患者具有特定异常并将医学图像添加到代表不存在特定异常的分组时,医疗图像被添加到表示特定异常的分组中,当文本字段没有指示患者 有特殊的异常。 医学图像的分组用于自动训练计算机系统以便随后检测特定的异常。
    • 2. 发明授权
    • Automatic learning of image features to predict disease
    • 自动学习图像特征预测疾病
    • US07949167B2
    • 2011-05-24
    • US12427974
    • 2009-04-22
    • Arun KrishnanXiang ZhouMartin HuberMichael KelmJoerg Freund
    • Arun KrishnanXiang ZhouMartin HuberMichael KelmJoerg Freund
    • G06K9/00A61B6/00A61B5/00
    • G06T7/11G06F19/00G06T7/0012G06T2207/20081G16H50/70
    • A method for training a computer system for automatic detection of regions of interest includes receiving patient records. For each of the received patient records a text field and a medical image are identified from within the patient record and the medical image is automatically segmented to identify a structure of interest. The text field is searched for one or more keywords indicative of a particular abnormality associated with the structure of interest. The medical image is added to a grouping representing the particular abnormality when the text field indicates that the patient has the particular abnormality and the medical image is added to a grouping representing the absence of the particular abnormality when the text field does not indicate that the patient has the particular abnormality. The groupings of medical images are used to automatically train a computer system for the subsequent detection of the particular abnormality.
    • 用于训练用于感兴趣区域的自动检测的计算机系统的方法包括接收患者记录。 对于每个接收到的患者记录,从患者记录中识别文本字段和医学图像,并且医疗图像被自动分段以识别感兴趣的结构。 搜索文本字段以查找指示与感兴趣结构相关联的特定异常的一个或多个关键字。 当文本字段指示患者具有特定异常并将医学图像添加到代表不存在特定异常的分组时,医疗图像被添加到表示特定异常的分组中,当文本字段没有指示患者 有特殊的异常。 医学图像的分组用于自动训练计算机系统以便随后检测特定的异常。
    • 5. 发明申请
    • METHOD AND A SYSTEM FOR IMAGE ANNOTATION
    • 方法和一种用于图像注释的系统
    • US20110182493A1
    • 2011-07-28
    • US12711363
    • 2010-02-24
    • Martin HUBERMichael KelmSascha Seifert
    • Martin HUBERMichael KelmSascha Seifert
    • G06K9/00G06K9/34G06F3/048
    • G06F19/321G16H15/00
    • A method and a system are disclosed for image annotation of images, in particular two- and three-dimensional medical images. In at least one embodiment, the image annotation system includes an image parser which parses images retrieved from an image database or provided by an image acquisition apparatus and segments each image into image regions. The image can be provided by any kind of image acquisition apparatus such as a digital camera an x-ray apparatus, a computer tomograph or a magnetic resonance scanning apparatus. Each segmented image regions is annotated automatically with annotation data and stored in an annotation database. In at least one embodiment, the system includes at least one user terminal which loads at least one selected image from said image database and retrieved the corresponding annotation data of all segmented image regions of said image from said annotation database for further annotation of the image. The image annotation system, in at least one embodiment, allows for a more efficient and more reliable annotation of images which can be further processed to generate automatically reports for examples of patients in a hospital. The image annotation method and system according to at least one embodiment of the invention, can be used in a wide range of applications in particular of annotation of medical images but also in security systems as well as in the developments of prototypes of complex apparatuses such as automobiles.
    • 公开了用于图像的图像注释的方法和系统,特别是二维和三维医学图像。 在至少一个实施例中,图像注释系统包括图像解析器,其解析从图像数据库检索或由图像获取装置提供的图像,并将每个图像分割成图像区域。 该图像可以由诸如数字照相机,X射线设备,计算机断层摄影机或磁共振扫描设备的任何种类的图像采集设备提供。 每个分割的图像区域都使用注释数据自动注释并存储在注释数据库中。 在至少一个实施例中,系统包括至少一个用户终端,其从所述图像数据库加载至少一个选定的图像,并且从所述注释数据库检索所述图像的所有分割图像区域的对应注释数据,以进一步注释图像。 在至少一个实施例中,图像注释系统允许图像的更有效和更可靠的注释,其可被进一步处理以自动生成报告,用于医院中患者的示例。 根据本发明的至少一个实施例的图像注释方法和系统可以用于特别是医学图像的注释的广泛应用中,但也可以用于安全系统以及复杂装置的原型开发中,例如 汽车