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    • 8. 发明申请
    • Leveraging Public Health Data for Prediction and Prevention of Adverse Events
    • 利用公共卫生数据预测和预防不良事件
    • US20140095201A1
    • 2014-04-03
    • US14032522
    • 2013-09-20
    • Faisal FarooqBalaji KrishnapuramGlenn FungShipeng YuKaren Nielsen
    • Faisal FarooqBalaji KrishnapuramGlenn FungShipeng YuKaren Nielsen
    • G06F19/00
    • G16H50/30
    • An adverse event may be prevented by predicting the probability of a given patient to have or undergo the adverse event. The ability to predict the probability of the adverse event may be enhanced when a model is derived from public health data to categorize and propose values for medical record fields. The probability alone may prevent the adverse event by educating the patient or medical professional. The probability may be predicted at any time, such as upon entry of information for the patient, periodic analysis, or at the time of admission. The probability may be used to generate a workflow action item to reduce the probability, to warn, to output appropriate instructions, and/or assist in avoiding adverse event. The probability may be specific to a hospital, physician group, or other medical entity, allowing prevention to focus on past adverse event causes for the given entity.
    • 可以通过预测给定患者具有或经历不良事件的可能性来防止不良事件。 当模型从公共卫生数据导出以对医疗记录领域进行分类和建议值时,可以增强预测不良事件概率的能力。 单靠概率可以通过教育患者或医疗专业人员来预防不良事件。 可以随时预测概率,例如在输入患者信息,定期分析或入院时。 概率可以用于生成工作流动作项目以降低概率,警告输出适当的指令和/或协助避免不利事件。 医院,医师团体或其他医疗机构的概率可能是特定的,允许预防集中于给定实体的过去不良事件原因。
    • 10. 发明申请
    • Using Candidates Correlation Information During Computer Aided Diagnosis
    • 在计算机辅助诊断期间使用候选人相关信息
    • US20070280530A1
    • 2007-12-06
    • US11742781
    • 2007-05-01
    • Glenn FungBalaji KrishnapuramVolkan VuralR. Rao
    • Glenn FungBalaji KrishnapuramVolkan VuralR. Rao
    • G06K9/62
    • G06T7/0012G06K9/6269G06K9/6278
    • A method and system correlate candidate information and provide batch classification of a number of related candidates. The batch of candidates may be identified from a single data set. There may be internal correlations and/or differences among the candidates. The candidates may be classified taking into consideration the internal correlations and/or differences. The locations and descriptive features of a batch of candidates may be determined. In turn, the locations and/or descriptive features determined may used to enhance the accuracy of the classification of some or all of the candidates within the batch. In one embodiment, the single data set analyzed is associated with an internal image of patient and the distance between candidates is accounted for. Two different algorithms may each simultaneously classify all of the samples within a batch, one being based upon probabilistic analysis and the other upon a mathematical programming approach. Alternate algorithms may be used.
    • 一种方法和系统将候选信息相关联并提供一些相关候选者的批次分类。 可以从单个数据集中识别该批候选。 候选人之间可能存在内部相关性和/或差异。 候选人可以考虑内部相关性和/或差异进行分类。 可以确定一批候选人的位置和描述性特征。 反过来,所确定的位置和/或描述性特征可以用于提高批次内的一些或所有候选者的分类的准确性。 在一个实施例中,所分析的单个数据集与患者的内部图像相关联,并且考虑候选者之间的距离。 两种不同的算法可以各自同时对批次中的所有样本进行分类,一种基于概率分析,另一种基于数学规划方法。 可以使用替代算法。