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Deep learning for ovarian follicle (OF) classification and counting: displaced rectifier linear unit (DReLU) and network stabilization through batch normalization (BN)

机译:对卵巢卵泡(of)分类和计数的深度学习:通过批量归一化(BN)流离失所的整流器线性单元(DRELU)和网络稳定

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Background and aim: Diagnosis and treatment of female infertility conditions would help future reproductive planning. Although current deep learning frameworks are able to classify and separately count all types at high accuracy, these solutions suffer from a misclassification error and a high computation complexity due to a positive bias effect and an internal covariate shift. The objective of this paper is to increase the classification accuracy of OFs and to reduce the computational costs of classification via deep learning (DL). Methodology: our framework for follicle classification and counting (FCaC) uses filter-based segmentation. A new method is also proposed to accelerate learning and to normalize the input layer by adjusting and scaling the activations. Our method uses a modified activation function (MAF)- displaced rectifier linear unit (DReLU) and batch normalization (BN) in Feature Extraction and Classification. Therefore, faster and more stable training is achieved by modifying input distribution of an activation function (AF). Results: The proposed system was able to obtain a mean classification accuracy of 97.614%, which is 2.264% more accurate classification than the state-of-the-art. Furthermore, the model processes a single WSI 30% faster (in 10.23 seconds compared to 14.646 seconds processing time of the existing solutions). Conclusion: The proposed system focuses on processing histology images with an accurate classification. It is also faster, has an accelerated convergence and enhanced learning thanks to BN and the EAF. We considered a positive bias effect and internal covariate shift as the main aspects to improve the classification performance.
机译:背景和目的:诊断和治疗女性不孕症条件将有助于未来的生殖计划。虽然目前的深度学习框架能够以高精度分类和单独计算所有类型,但由于正偏差效应和内部协变速转移,这些解决方案遭受错误分类误差和高计算复杂性。本文的目的是提高ofs的分类准确性,并通过深度学习(DL)降低分类的计算成本。方法论:我们的卵泡分类和计数框架(FCAC)使用基于滤波器的分割。还提出了一种新方法来加速学习并通过调整和缩放激活来归一化输入层。我们的方法使用修改的激活功能(MAF) - 位移的整流器线性单元(DRELU)和分批归一化(BN)在特征提取和分类中。因此,通过修改激活功能的输入分布(AF)来实现更快和更稳定的培训。结果:该拟议的系统能够获得97.614%的平均分类准确性,比最先进的分类为2.264%。此外,模型处理单个WSI快30%(在10.23秒内,与现有解决方案的14.646秒相比)。结论:所提出的系统专注于用准确分类处理组织学图像。它也更快,由于BN和EAF,有加速的收敛和增强学习。我们认为积极的偏见效果和内部协变化转变为改善分类性能的主要方面。

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