Improving Follicular Lymphoma Identification using the Class of Interest for Transfer Learning

U. Somaratne, Kok Wai Wong, J. Parry, Ferdous Sohel, Xuequn Wang, Hamid Laga
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引用次数: 6

Abstract

Follicular Lymphoma (FL) is a type of lymphoma that grows silently and is usually diagnosed in its later stages. To increase the patients' survival rates, FL requires a fast diagnosis. While, traditionally, the diagnosis is performed by visual inspection of Whole Slide Images (WSI), recent advances in deep learning techniques provide an opportunity to automate this process. The main challenge, however, is that WSI images often exhibit large variations across different operating environments, hereinafter referred to as sites. As such, deep learning models usually require retraining using labeled data from each new site. This is, however, not feasible since the labelling process requires pathologists to visually inspect and label each sample. In this paper, we propose a deep learning model that uses transfer learning with fine-tuning to improve the identification of Follicular Lymphoma on images from new sites that are different from those used during training. Our results show that the proposed approach improves the prediction accuracy with 12% to 52% compared to the initial prediction of the model for images from a new site in the target environment.
利用兴趣班进行迁移学习提高滤泡性淋巴瘤的识别
滤泡性淋巴瘤(FL)是一种无声生长的淋巴瘤,通常在其晚期才被诊断出来。为了提高患者的生存率,FL需要快速诊断。传统上,诊断是通过对整个幻灯片图像(WSI)进行视觉检查来进行的,而深度学习技术的最新进展为自动化这一过程提供了机会。然而,主要的挑战是WSI图像在不同的操作环境(以下简称为站点)中经常表现出很大的变化。因此,深度学习模型通常需要使用来自每个新站点的标记数据进行再训练。然而,这是不可行的,因为标记过程需要病理学家目视检查和标记每个样本。在本文中,我们提出了一种深度学习模型,该模型使用迁移学习和微调来提高对来自不同于训练期间使用的新站点的图像的滤泡性淋巴瘤的识别。我们的研究结果表明,与模型的初始预测相比,该方法对目标环境中新位置的图像的预测精度提高了12%至52%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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