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Computationally efficient whole tissue classifier for histology slides

机译:计算有效的组织学分类全组织分类器

摘要

Systems and methods are disclosed for classifying histological tissues or specimens with two phases. In a first phase, the method includes providing off-line training using a processor during which one or more classifiers are trained based on examples, including: finding a split of features into sets of increasing computational cost, assigning a computational cost to each set; training for each set of features a classifier using training examples; training for each classifier, a utility function that scores a usefulness of extracting the next feature set for a given tissue unit using the training examples. In a second phase, the method includes applying the classifiers to an unknown tissue sample with extracting the first set of features for all tissue units; deciding for which tissue unit to extract the next set of features by finding the tissue unit for which a score: S=U−h*C is maximized, where U is a utility function, C is a cost of acquiring the feature and h is a weighting parameter; iterating until a stopping criterion is met or no more feature can be computed; and issuing a tissue-level decision based on a current state.
机译:公开了用于以两个阶段对组织学组织或样本进行分类的系统和方法。在第一阶段,该方法包括使用处理器提供离线训练,在该训练过程中,基于示例来训练一个或多个分类器,包括:将特征划分成增加计算成本的集合,为每个集合分配计算成本;训练每个分类特征的分类器使用训练实例;训练每个分类器,使用效用函数对使用训练示例为给定组织单位提取下一个特征集的有用性进行评分。在第二阶段,该方法包括将分类器应用于未知组织样本,并提取所有组织单位的第一组特征;通过找到得分最高的组织单位(S = U-h * C)来确定哪个组织单位要提取下一组特征,其中U是效用函数,C是获得特征的成本,h是加权参数;迭代直到满足停止标准或无法计算更多特征为止;并基于当前状态发布组织级决策。

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