Deep learning techniques show success in detecting objects in medical images, but still suffer from false-positive predictions that may hinder accurate diagnosis. The estimated uncertainty of the neural network output has been used to flag incorrect predictions. We study the role played by features computed from neural network uncertainty estimates and shape-based features computed from binary predictions in reducing false positives in liver lesion detection by developing a classification-based post-processing step for different uncertainty estimation methods. We demonstrate an improvement in the lesion detection performance of the neural network (with respect to F1-score) for all uncertainty estimation methods on two datasets, comprising abdominal MR and CT images, respectively. We show that features computed from neural network uncertainty estimates tend not to contribute much toward reducing false positives. Our results show that factors like class imbalance (true over false positive ratio) and shape-based features extracted from uncertainty maps play an important role in distinguishing false positive from true positive predictions. Our code can be found at https://github.com/ishaanb92/FPCPipeline.
翻译:深层学习技术显示在医学图像中检测对象方面取得成功,但仍受到可能妨碍准确诊断的虚假阳性预测的影响。神经网络输出的估计不确定性被用于显示不正确的预测。我们研究了通过神经网络不确定性估计和基于形状的特征计算出的特征在降低肝脏损伤检测的假阳性方面所起的作用。我们开发了一个基于分类的后处理步骤,用于不同的不确定性估计方法。我们展示了神经网络(F1-score)对两个数据集(分别包括腹部MM和CT图像)的所有不确定性估计方法的损害检测性能的改善。我们显示,从神经网络不确定性估计中计算出的特征对减少假阳性没有多大帮助。我们的结果显示,阶级不平衡(相对于假正比)和从不确定性图中提取的基于形状特征等因素在区分真实正面预测的假阳性方面发挥着重要作用。我们的代码可以在 https://github.com/ishaanb92/FPCPipline上找到。