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定量核组织形态计量学特征可预测导管原位癌的 Oncotype DX 风险类别:初步研究结果。

Quantitative nuclear histomorphometric features are predictive of Oncotype DX risk categories in ductal carcinoma in situ: preliminary findings.

机构信息

Department of Biomedical Engineering, Case Western Reserve University, Cleveland, OH, USA.

University Hospitals Cleveland Medical Center, Cleveland, OH, USA.

出版信息

Breast Cancer Res. 2019 Oct 17;21(1):114. doi: 10.1186/s13058-019-1200-6.

Abstract

BACKGROUND

Oncotype DX (ODx) is a 12-gene assay assessing the recurrence risk (high, intermediate, and low) of ductal carcinoma in situ (pre-invasive breast cancer), which guides clinicians regarding prescription of radiotherapy. However, ODx is expensive, time-consuming, and tissue-destructive. In addition, the actual prognostic meaning for the intermediate ODx risk category remains unclear.

METHODS

In this work, we evaluated the ability of quantitative nuclear histomorphometric features extracted from hematoxylin and eosin-stained slide images of 62 ductal carcinoma in situ (DCIS) patients to distinguish between the corresponding ODx risk categories. The prognostic value of the identified image signature was further evaluated on an independent validation set of 30 DCIS patients in its ability to distinguish those DCIS patients who progressed to invasive carcinoma versus those who did not. Following nuclear segmentation and feature extraction, feature ranking strategies were employed to identify the most discriminating features between individual ODx risk categories. The selected features were then combined with machine learning classifiers to establish models to predict ODx risk categories. The model performance was evaluated using the average area under the receiver operating characteristic curve (AUC) using cross validation. In addition, an unsupervised clustering approach was also implemented to evaluate the ability of nuclear histomorphometric features to discriminate between the ODx risk categories.

RESULTS

Features relating to spatial distribution, orientation disorder, and texture of nuclei were identified as most discriminating between the high ODx and the intermediate, low ODx risk categories. Additionally, the AUC of the most discriminating set of features for the different classification tasks was as follows: (1) high vs low ODx (0.68), (2) high vs. intermediate ODx (0.67), (3) intermediate vs. low ODx (0.57), (4) high and intermediate vs. low ODx (0.63), (5) high vs. low and intermediate ODx (0.66). Additionally, the unsupervised clustering resulted in intermediate ODx risk category patients being co-clustered with low ODx patients compared to high ODx.

CONCLUSION

Our results appear to suggest that nuclear histomorphometric features can distinguish high from low and intermediate ODx risk category patients. Additionally, our findings suggest that histomorphometric features for intermediate ODx were more similar to low ODx compared to high ODx risk category.

摘要

背景

Oncotype DX(ODx)是一种 12 基因检测方法,用于评估导管原位癌(乳腺前癌)的复发风险(高、中、低),指导临床医生决定是否开具放射治疗。然而,ODx 昂贵、耗时且具有组织破坏性。此外,中间 ODx 风险类别的实际预后意义仍不清楚。

方法

在这项工作中,我们评估了从 62 例导管原位癌(DCIS)患者的苏木精和伊红染色切片图像中提取的定量核形态计量特征,以区分相应的 ODx 风险类别。在所评估的 62 例患者中,通过识别图像特征来区分进展为浸润性癌的 DCIS 患者和未进展为浸润性癌的患者,进一步评估所识别的图像特征在独立验证集(30 例 DCIS 患者)中的预后价值。在核分割和特征提取之后,采用特征排序策略来识别在个体 ODx 风险类别之间具有最大区分能力的特征。然后,将选定的特征与机器学习分类器相结合,建立预测 ODx 风险类别的模型。使用交叉验证的平均接收者操作特征曲线下面积(AUC)来评估模型性能。此外,还实施了无监督聚类方法,以评估核形态计量特征区分 ODx 风险类别的能力。

结果

与高 ODx 和中、低 ODx 风险类别之间的区分最相关的特征是与核的空间分布、取向紊乱和纹理有关的特征。此外,不同分类任务中最具区分力的特征集的 AUC 如下:(1)高 vs 低 ODx(0.68),(2)高 vs 中 ODx(0.67),(3)中 vs 低 ODx(0.57),(4)高和中 vs 低 ODx(0.63),(5)高 vs 低和中 ODx(0.66)。此外,无监督聚类结果表明,与高 ODx 相比,中间 ODx 风险类别的患者与低 ODx 患者聚类在一起。

结论

我们的结果似乎表明,核形态计量特征可以区分高、中、低 ODx 风险类别的患者。此外,我们的研究结果表明,中间 ODx 的形态计量特征与低 ODx 相比,与高 ODx 风险类别更为相似。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/32b1/6798488/658fd1a7b174/13058_2019_1200_Fig1_HTML.jpg

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