在异质活检样本中,通过多光谱荧光成像改进了蛋白质多组分的自动定位和定量

M. Sapir, F. Khan, Yevgen Vengrenyuk, G. Fernandez, R. Mesa-Tejada, Stefan Hamman, M. Teverovskiy, M. Donovan
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引用次数: 12

摘要

我们提出了一种新的改进先前发表的图像分析系统,用于免疫荧光(IF)显微图像中蛋白质生物标志物表达的自动定位和定量。改进主要是针对基于活检的图像,这些图像的性质是可变的质量和异质性。该创新方法用于从背景中区分生物标志物信号,其中信号可能是IF中使用的多个生物标志物或反染色的表达。该方法是动态的,它基于疾病和非疾病组织成分之间的关系派生出真实生物标志物信号的阈值。此外,还提出了一种新的动态范围特征构建方法,该方法受处理和其他组织变化的影响较小。基于诊断活检组织,该方法在根治性前列腺切除术后8年内预测前列腺癌疾病进展方面的效用已得到证实。为此,研究人员对前列腺活检样本中的雄激素受体(AR)和Ki67生物标志物表达进行了量化,并在单变量分析中证明了该方法的特征与疾病进展相关,并且表现出优于先前系统的性能。此外,AR和Ki67的特征被选择在一个综合临床、组织学和生物标志物特征的多变量模型中,证明了它们的独立预后价值。
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Improved automated localization and quantification of protein multiplexes via multispectral fluorescence imaging in heterogenous biopsy samples
We present a novel improvement of our previously published image analysis system for the automated localization and quantification of protein biomarker expression in immunofluorescence (IF) microscopic images. The improvement has been developed primarily for biopsy based images which are by nature of variable quality and heterogeneous. The innovative method is employed for discriminating the biomarker signal from background, where signal may be the expression of multiple biomarkers or counterstains used in IF. The method is dynamic and it derives a threshold for a true biomarker signal based on the relationship between disease and non-disease tissue components. In addition, a new dynamic range feature construction is presented that is less affected by processing and other variations in tissue. The utility of the approach is demonstrated in predicting, based on the diagnostic biopsy tissue, prostate cancer disease progression within eight years after a radical prostatectomy. For this purpose, androgen receptor (AR) and Ki67 biomarker expression in prostate biopsy samples was quantified and features from the proposed approach were shown to be associated with disease progression in a univariate analysis and manifested improved performance over prior systems. Furthermore, AR and Ki67 features were selected in a multivariate model integrating clinical, histological, and biomarker features, proving their independent prognostic value.
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