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DETECTING CELLS OF INTEREST IN LARGE IMAGE DATASETS USING ARTIFICIAL INTELLIGENCE

机译:使用人工智能检测大图像数据集的感兴趣的细胞

摘要

A method for selecting a final model for detecting cells of interest in image datasets includes dividing a curated image dataset into a training set, a validation set, and a testing set where each image in the curated image dataset has been labeled as positive or negative for a cell of interest. The method trains each model of an ensemble of neural networks using the training and validation sets. Next, each model of the ensemble is tested using the testing set and the predictions of the ensemble are combined. The combined prediction is compared to the label and the method determines whether the combined prediction satisfies a pre-determined level of detection (LOD). If so, the method outputs the ensemble as a final ensemble. If not, the method modifies a hyperparameter of at least one of the models of the ensemble until the combined prediction satisfies the pre-determined LOD.
机译:一种用于选择用于检测图像数据集中感兴趣的单元的最终模型的方法包括将静电图像数据集划分为训练集,验证集和测试集,其中静电图像数据集中的每个图像被标记为正或负面 感兴趣的细胞。 该方法使用训练和验证集列举神经网络的整体模型。 接下来,使用测试集进行测试集合的每个模型,并组合了集合的预测。 将组合预测与标签进行比较,并且该方法确定组合预测是否满足预定检测水平(LOD)。 如果是,则该方法将该组合输出为最终的集合。 如果不是,则该方法将在组合预测满足预定的LOD之前修改集合的至少一个模型的超级参数。

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