论文标题

罕见性贫血障碍分类的异常觉学多个实例学习

Anomaly-aware multiple instance learning for rare anemia disorder classification

论文作者

Kazeminia, Salome, Sadafi, Ario, Makhro, Asya, Bogdanova, Anna, Albarqouni, Shadi, Marr, Carsten

论文摘要

缺乏培训数据和实例级注释,基于罕见的贫血疾病的深度学习分类受到挑战。多个实例学习(MIL)已证明是一个有效的解决方案,但其精度较低,解释性有限。尽管关注机制的包含已经解决了这些问题,但它们的有效性在很大程度上取决于训练样本中细胞的数量和多样性。因此,从血液样本中罕见的贫血障碍分类的机器学习表现不佳。在本文中,我们提出了一种可解释的合并方法,以解决这些局限性。通过从负面袋的实例级信息(即,来自健康个体的均质细胞)中受益,我们的方法增加了异常实例的贡献。我们表明,我们的战略优于标准的MIL分类算法,并在决策背后提供了有意义的解释。此外,它可以表示在训练阶段看不到的罕见血液疾病的异常情况。

Deep learning-based classification of rare anemia disorders is challenged by the lack of training data and instance-level annotations. Multiple Instance Learning (MIL) has shown to be an effective solution, yet it suffers from low accuracy and limited explainability. Although the inclusion of attention mechanisms has addressed these issues, their effectiveness highly depends on the amount and diversity of cells in the training samples. Consequently, the poor machine learning performance on rare anemia disorder classification from blood samples remains unresolved. In this paper, we propose an interpretable pooling method for MIL to address these limitations. By benefiting from instance-level information of negative bags (i.e., homogeneous benign cells from healthy individuals), our approach increases the contribution of anomalous instances. We show that our strategy outperforms standard MIL classification algorithms and provides a meaningful explanation behind its decisions. Moreover, it can denote anomalous instances of rare blood diseases that are not seen during the training phase.

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