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离散蛋白质度量(DPM):一种新的图像相似性度量,用于计算深度学习生成的细胞焦点黏附预测的准确性。

Discrete protein metric (DPM): A new image similarity metric to calculate accuracy of deep learning-generated cell focal adhesion predictions.

机构信息

Mechanobiology and Biomedicine Lab, Department of Biomedical Engineering, Wichita State University, Wichita KS USA.

Mechanobiology and Biomedicine Lab, Department of Biomedical Engineering, Wichita State University, Wichita KS USA.

出版信息

Micron. 2022 Sep;160:103302. doi: 10.1016/j.micron.2022.103302. Epub 2022 May 23.

Abstract

Understanding cell behaviors can provide new knowledge on the development of different pathologies. Focal adhesion (FA) sites are important sub-cellular structures that are involved in these processes. To better facilitate the study of FA sites, deep learning (DL) can be used to predict FA site morphology based on limited microscopic datasets (e.g., cell membrane images). However, calculating the accuracy score of these predictions can be challenging due to the discrete/point pattern like nature of FA sites. In the present work, a new image similarity metric, discrete protein metric (DPM), was developed to calculate FA prediction accuracy. This metric measures differences in distribution (d), shape/size (s), and angle (a) of FA sites between predicted and ground truth microscopy images. Performance of the DPM was evaluated by comparing it to three other commonly used image similarity metrics: Pearson correlation coefficient (PCC), feature similarity index (FSIM), and Intersection over Union (IoU). A sensitivity analysis was performed by comparing changes in each metric value due to quantifiable changes in FA site location, number, aspect ratio, area, or orientation. Furthermore, accuracy score of DL-generated predictions was calculated using all four metrics to compare their ability to capture variation across samples. Results showed better sensitivity and range of variation for DPM compared to the other metrics tested. Most importantly, DPM had the ability to determine which FA predictions were quantitatively more accurate and consistent with qualitative assessments. The proposed DPM hence provides a method to validate DL-generated FA predictions and has the potential to be used for investigation of other sub-cellular protein aggregates relevant to cell biology.

摘要

理解细胞行为可以为不同病理的发展提供新知识。焦点黏附(FA)位点是涉及这些过程的重要亚细胞结构。为了更好地促进 FA 位点的研究,可以使用深度学习(DL)根据有限的微观数据集(例如细胞膜图像)来预测 FA 位点的形态。然而,由于 FA 位点的离散/点状性质,计算这些预测的准确度评分可能具有挑战性。在本工作中,开发了一种新的图像相似性度量,即离散蛋白度量(DPM),用于计算 FA 预测的准确性。该度量衡量预测和真实显微镜图像之间 FA 位点的分布(d)、形状/大小(s)和角度(a)差异。通过将 DPM 与其他三种常用的图像相似性度量(Pearson 相关系数(PCC)、特征相似性指数(FSIM)和交并比(IoU))进行比较,评估了 DPM 的性能。通过比较 FA 位点位置、数量、纵横比、面积或方向的可量化变化对每个度量值的影响,进行了敏感性分析。此外,使用所有四个度量来计算 DL 生成的预测的准确度评分,以比较它们捕获样本间变化的能力。结果表明,与测试的其他度量相比,DPM 具有更好的灵敏度和变化范围。最重要的是,DPM 能够确定哪些 FA 预测在定量上更准确,并且与定性评估更一致。因此,所提出的 DPM 提供了一种验证 DL 生成的 FA 预测的方法,并有可能用于研究与细胞生物学相关的其他亚细胞蛋白聚集体。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4bea/10228147/fc31620898ef/nihms-1891761-f0001.jpg

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