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Content-based image retrieval of digitized histopathology in boosted spectrally embedded spaces

机译:增强频谱嵌入空间中数字化组织病理学的基于内容的图像检索

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Context:Content-based image retrieval (CBIR) systems allow for retrieval of images from within a database that are similar in visual content to a query image. This is useful for digital pathology, where text-based descriptors alone might be inadequate to accurately describe image content. By representing images via a set of quantitative image descriptors, the similarity between a query image with respect to archived, annotated images in a database can be computed and the most similar images retrieved. Recently, non-linear dimensionality reduction methods have become popular for embedding high-dimensional data into a reduced-dimensional space while preserving local object adjacencies, thereby allowing for object similarity to be determined more accurately in the reduced-dimensional space. However, most dimensionality reduction methods implicitly assume, in computing the reduced-dimensional representation, that all features are equally important.Aims:In this paper we present boosted spectral embedding(BoSE), which utilizes a boosted distance metric to selectively weight individual features (based on training data) to subsequently map the data into a reduced-dimensional space.Settings and Design:BoSE is evaluated against spectral embedding (SE) (which employs equal feature weighting) in the context of CBIR of digitized prostate and breast cancer histopathology images.Materials and Methods:The following datasets, which were comprised of a total of 154 hematoxylin and eosin stained histopathology images, were used: (1) Prostate cancer histopathology (benign vs. malignant), (2) estrogen receptor (ER) + breast cancer histopathology (low vs. high grade), and (3) HER2+ breast cancer histopathology (low vs. high levels of lymphocytic infiltration).Statistical Analysis Used:We plotted and calculated the area under precision-recall curves (AUPRC) and calculated classification accuracy using the Random Forest classifier.Results:BoSE outperformed SE both in terms of CBIR-based (area under the precision-recall curve) and classifier-based (classification accuracy) on average across all of the dimensions tested for all three datasets: (1) Prostate cancer histopathology (AUPRC: BoSE = 0.79, SE = 0.63; Accuracy: BoSE = 0.93, SE = 0.80), (2) ER + breast cancer histopathology (AUPRC: BoSE = 0.79, SE = 0.68; Accuracy: BoSE = 0.96, SE = 0.96), and (3) HER2+ breast cancer histopathology (AUPRC: BoSE = 0.54, SE = 0.44; Accuracy: BoSE = 0.93, SE = 0.91).Conclusion:Our results suggest that BoSE could serve as an important tool for CBIR and classification of high-dimensional biomedical data.
机译:背景:基于内容的图像检索(CBIR)系统允许从数据库中检索视觉内容与查询图像相似的图像。这对于数字病理非常有用,其中仅基于文本的描述符可能不足以准确描述图像内容。通过经由一组定量图像描述符表示图像,可以计算查询图像相对于数据库中已存档的带注释的图像之间的相似度,并检索最相似的图像。近来,非线性维数减少方法已经流行用于将高维数据嵌入到维数减少的空间中,同时保留局部对象邻接,从而允许在维数减少的空间中更精确地确定对象相似度。然而,大多数降维方法在计算降维表示时都隐含地假设所有特征同等重要。目的:本文提出了增强光谱嵌入(BoSE),它利用增强距离度量来选择性地加权单个特征(设置和设计:BoSE在数字化前列腺和乳腺癌组织病理学图像的CBIR情况下针对频谱嵌入(SE)(采用相等特征权重)进行评估材料与方法:使用以下数据集,共154张苏木精和伊红染色的组织病理学图像组成:(1)前列腺癌组织病理学(良性与恶性),(2)雌激素受体(ER)+乳腺(3)HER2 +乳腺癌组织病理学(低水平与高水平的淋巴细胞浸润)。计算并计算了精确召回曲线下的面积(AUPRC),并使用随机森林分类器计算了分类精度。结果:BoSE在基于CBIR的(精确召回曲线下的面积)和基于分类器(分类)方面均优于SE所有三个数据集在所有维度上的平均准确性):( 1)前列腺癌的组织病理学(AUPRC:BoSE = 0.79,SE = 0.63;准确性:BoSE = 0.93,SE = 0.80),(2)ER +乳腺癌组织病理学(AUPRC:BoSE = 0.79,SE = 0.68;准确性:BoSE = 0.96,SE = 0.96),(3)HER2 +乳腺癌组织学( AUPRC:BoSE = 0.54,SE = 0.44;准确性:BoSE = 0.93,SE = 0.91)结论:我们的结果表明,BoSE可以作为CBIR和高维生物医学数据分类的重要工具。

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