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高内涵筛选中神经元药物处理后的多神经元图像的表型变化鉴定

HCS-Neurons: identifying phenotypic changes in multi-neuron images upon drug treatments of high-content screening.

出版信息

BMC Bioinformatics. 2013;14 Suppl 16(Suppl 16):S12. doi: 10.1186/1471-2105-14-S16-S12. Epub 2013 Oct 22.

Abstract

BACKGROUND

High-content screening (HCS) has become a powerful tool for drug discovery. However, the discovery of drugs targeting neurons is still hampered by the inability to accurately identify and quantify the phenotypic changes of multiple neurons in a single image (named multi-neuron image) of a high-content screen. Therefore, it is desirable to develop an automated image analysis method for analyzing multi-neuron images.

RESULTS

We propose an automated analysis method with novel descriptors of neuromorphology features for analyzing HCS-based multi-neuron images, called HCS-neurons. To observe multiple phenotypic changes of neurons, we propose two kinds of descriptors which are neuron feature descriptor (NFD) of 13 neuromorphology features, e.g., neurite length, and generic feature descriptors (GFDs), e.g., Haralick texture. HCS-neurons can 1) automatically extract all quantitative phenotype features in both NFD and GFDs, 2) identify statistically significant phenotypic changes upon drug treatments using ANOVA and regression analysis, and 3) generate an accurate classifier to group neurons treated by different drug concentrations using support vector machine and an intelligent feature selection method. To evaluate HCS-neurons, we treated P19 neurons with nocodazole (a microtubule depolymerizing drug which has been shown to impair neurite development) at six concentrations ranging from 0 to 1000 ng/mL. The experimental results show that all the 13 features of NFD have statistically significant difference with respect to changes in various levels of nocodazole drug concentrations (NDC) and the phenotypic changes of neurites were consistent to the known effect of nocodazole in promoting neurite retraction. Three identified features, total neurite length, average neurite length, and average neurite area were able to achieve an independent test accuracy of 90.28% for the six-dosage classification problem. This NFD module and neuron image datasets are provided as a freely downloadable MatLab project at http://iclab.life.nctu.edu.tw/HCS-Neurons.

CONCLUSIONS

Few automatic methods focus on analyzing multi-neuron images collected from HCS used in drug discovery. We provided an automatic HCS-based method for generating accurate classifiers to classify neurons based on their phenotypic changes upon drug treatments. The proposed HCS-neurons method is helpful in identifying and classifying chemical or biological molecules that alter the morphology of a group of neurons in HCS.

摘要

背景

高通量筛选(HCS)已成为药物发现的有力工具。然而,由于无法准确识别和量化高内涵筛选中单张图像(称为多神经元图像)中多个神经元的表型变化,因此仍然难以发现针对神经元的药物。因此,开发一种用于分析多神经元图像的自动化图像分析方法是很有必要的。

结果

我们提出了一种新的神经元形态学特征描述符的自动化分析方法,用于分析基于 HCS 的多神经元图像,称为 HCS-neurons。为了观察神经元的多种表型变化,我们提出了两种描述符,即 13 种神经元形态学特征的神经元特征描述符(NFD),例如神经突长度,和通用特征描述符(GFD),例如 Haralick 纹理。HCS-neurons 可以 1)自动提取 NFD 和 GFD 中的所有定量表型特征,2)使用 ANOVA 和回归分析识别药物处理后具有统计学意义的表型变化,3)使用支持向量机和智能特征选择方法生成用于对不同药物浓度处理的神经元进行分组的精确分类器。为了评估 HCS-neurons,我们用浓度范围为 0 至 1000ng/ml 的 nocodazole(一种已被证明能破坏微管发育的微管解聚药物)处理 P19 神经元。实验结果表明,NFD 的所有 13 个特征与不同水平的 nocodazole 药物浓度(NDC)的神经突变化都具有统计学意义,并且神经突的表型变化与 nocodazole 促进神经突回缩的已知作用一致。三个已识别的特征,即总神经突长度、平均神经突长度和平均神经突面积,对于六剂量分类问题的独立测试准确率达到了 90.28%。该 NFD 模块和神经元图像数据集作为一个可自由下载的 MatLab 项目提供在 http://iclab.life.nctu.edu.tw/HCS-Neurons。

结论

很少有自动方法专注于分析高通量筛选中采集的多神经元图像,用于药物发现。我们提供了一种基于 HCS 的自动方法,用于生成精确的分类器,根据药物处理后神经元的表型变化对其进行分类。所提出的 HCS-neurons 方法有助于识别和分类改变 HCS 中一组神经元形态的化学或生物分子。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/56fd/3853092/5162548e1667/1471-2105-14-S16-S12-1.jpg

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