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基于分割和分类的组合方法,用于对钙成像获得的生物医学信号进行自动分析。

Combined segmentation and classification-based approach to automated analysis of biomedical signals obtained from calcium imaging.

机构信息

Electrical and Electronics Engineering Department, Süleyman Demirel University, Isparta, Turkey.

Center for Laser Microscopy, Faculty of Biology, University of Belgrade, Belgrade, Serbia.

出版信息

PLoS One. 2023 Feb 6;18(2):e0281236. doi: 10.1371/journal.pone.0281236. eCollection 2023.

Abstract

Automated screening systems in conjunction with machine learning-based methods are becoming an essential part of the healthcare systems for assisting in disease diagnosis. Moreover, manually annotating data and hand-crafting features for training purposes are impractical and time-consuming. We propose a segmentation and classification-based approach for assembling an automated screening system for the analysis of calcium imaging. The method was developed and verified using the effects of disease IgGs (from Amyotrophic Lateral Sclerosis patients) on calcium (Ca2+) homeostasis. From 33 imaging videos we analyzed, 21 belonged to the disease and 12 to the control experimental groups. The method consists of three main steps: projection, segmentation, and classification. The entire Ca2+ time-lapse image recordings (videos) were projected into a single image using different projection methods. Segmentation was performed by using a multi-level thresholding (MLT) step and the Regions of Interest (ROIs) that encompassed cell somas were detected. A mean value of the pixels within these boundaries was collected at each time point to obtain the Ca2+ traces (time-series). Finally, a new matrix called feature image was generated from those traces and used for assessing the classification accuracy of various classifiers (control vs. disease). The mean value of the segmentation F-score for all the data was above 0.80 throughout the tested threshold levels for all projection methods, namely maximum intensity, standard deviation, and standard deviation with linear scaling projection. Although the classification accuracy reached up to 90.14%, interestingly, we observed that achieving better scores in segmentation results did not necessarily correspond to an increase in classification performance. Our method takes the advantage of the multi-level thresholding and of a classification procedure based on the feature images, thus it does not have to rely on hand-crafted training parameters of each event. It thus provides a semi-autonomous tool for assessing segmentation parameters which allows for the best classification accuracy.

摘要

自动化筛选系统与基于机器学习的方法相结合,正在成为医疗保健系统的重要组成部分,以辅助疾病诊断。此外,为了训练目的而手动注释数据和手工制作特征是不切实际且耗时的。我们提出了一种基于分割和分类的方法,用于组装用于钙成像分析的自动化筛选系统。该方法是使用疾病 IgG(来自肌萎缩侧索硬化症患者)对钙(Ca2+)稳态的影响来开发和验证的。在我们分析的 33 个成像视频中,有 21 个属于疾病组,12 个属于对照组。该方法包括三个主要步骤:投影、分割和分类。使用不同的投影方法将整个 Ca2+延时图像记录(视频)投影到单个图像中。分割是通过多级阈值(MLT)步骤和检测包含细胞体的感兴趣区域(ROI)来完成的。在每个时间点收集这些边界内的像素的平均值,以获得 Ca2+轨迹(时间序列)。最后,从这些轨迹生成一个称为特征图像的新矩阵,并用于评估各种分类器(对照与疾病)的分类准确性。在所有测试的投影方法中,所有数据的分割 F-score 的平均值均高于 0.80,即最大强度、标准差和线性缩放投影的标准差。虽然分类准确性高达 90.14%,但有趣的是,我们观察到在分割结果中获得更好的分数并不一定对应于分类性能的提高。我们的方法利用多级阈值和基于特征图像的分类过程,因此不必依赖于每个事件的手工制作的训练参数。它因此提供了一种半自动工具来评估分割参数,从而实现最佳的分类准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/45ac/9901747/b3ab92d4f4b7/pone.0281236.g001.jpg

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