跨域白细胞分类的持续学习方法

A. Sadafi, Raheleh Salehi, A. Gruber, Sayedali Shetab Boushehri, Pascal Giehr, N. Navab, Carsten Marr
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引用次数: 0

摘要

外周血白细胞的准确分类对血液病的诊断至关重要。由于临床环境、数据源和疾病分类的不断发展,有必要定期更新机器学习分类模型以供实际应用。这样的模型在不忘记先前获得的知识的情况下,从传入的数据流中进行顺序学习,从而显著受益。然而,模型可能会遭受灾难性的遗忘,当对新数据进行微调时,会导致先前任务的性能下降。在这里,我们提出了一种基于预演的持续学习方法,用于白细胞分类中的类增量和域增量场景。为了从以前的任务中选择有代表性的样本,我们采用基于模型预测的样例集选择。这包括选择最可靠的样本和最具挑战性的样本,通过模型的不确定性估计确定。我们在三个白细胞分类数据集上全面评估了我们提出的方法,这些数据集在颜色、分辨率和类别组成上有所不同,包括在每个任务中向模型引入新域或新类别的场景。我们还对新域和新类进行了长时间的类增量实验。我们的研究结果表明,我们的方法在持续学习方面优于已建立的基线,包括现有的iCaRL和EWC方法,用于在跨域环境中对白细胞进行分类。
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A Continual Learning Approach for Cross-Domain White Blood Cell Classification
Accurate classification of white blood cells in peripheral blood is essential for diagnosing hematological diseases. Due to constantly evolving clinical settings, data sources, and disease classifications, it is necessary to update machine learning classification models regularly for practical real-world use. Such models significantly benefit from sequentially learning from incoming data streams without forgetting previously acquired knowledge. However, models can suffer from catastrophic forgetting, causing a drop in performance on previous tasks when fine-tuned on new data. Here, we propose a rehearsal-based continual learning approach for class incremental and domain incremental scenarios in white blood cell classification. To choose representative samples from previous tasks, we employ exemplar set selection based on the model's predictions. This involves selecting the most confident samples and the most challenging samples identified through uncertainty estimation of the model. We thoroughly evaluated our proposed approach on three white blood cell classification datasets that differ in color, resolution, and class composition, including scenarios where new domains or new classes are introduced to the model with every task. We also test a long class incremental experiment with both new domains and new classes. Our results demonstrate that our approach outperforms established baselines in continual learning, including existing iCaRL and EWC methods for classifying white blood cells in cross-domain environments.
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