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将机器学习应用于光学相干断层扫描图像,实现脑转移瘤的自动组织分类。

Applying machine learning to optical coherence tomography images for automated tissue classification in brain metastases.

机构信息

Photonics and Terahertz Technology, Ruhr University Bochum, Bochum, Germany.

Department of Neurosurgery, University Hospital Knappschaftskrankenhaus Bochum, Ruhr University Bochum, Bochum, Germany.

出版信息

Int J Comput Assist Radiol Surg. 2021 Sep;16(9):1517-1526. doi: 10.1007/s11548-021-02412-2. Epub 2021 May 30.

Abstract

PURPOSE

A precise resection of the entire tumor tissue during surgery for brain metastases is essential to reduce local recurrence. Conventional intraoperative imaging techniques all have limitations in detecting tumor remnants. Therefore, there is a need for innovative new imaging methods such as optical coherence tomography (OCT). The purpose of this study is to discriminate brain metastases from healthy brain tissue in an ex vivo setting by applying texture analysis and machine learning algorithms for tissue classification to OCT images.

METHODS

Tumor and healthy tissue samples were collected during resection of brain metastases. Samples were imaged using OCT. Texture features were extracted from B-scans. Then, a machine learning algorithm using principal component analysis (PCA) and support vector machines (SVM) was applied to the OCT scans for classification. As a gold standard, an experienced pathologist examined the tissue samples histologically and determined the percentage of vital tumor, necrosis and healthy tissue of each sample. A total of 14.336 B-scans from 14 tissue samples were included in the classification analysis.

RESULTS

We were able to discriminate vital tumor from healthy brain tissue with an accuracy of 95.75%. By comparing necrotic tissue and healthy tissue, a classification accuracy of 99.10% was obtained. A generalized classification between brain metastases (vital tumor and necrosis) and healthy tissue was achieved with an accuracy of 96.83%.

CONCLUSIONS

An automated classification of brain metastases and healthy brain tissue is feasible using OCT imaging, extracted texture features and machine learning with PCA and SVM. The established approach can prospectively provide the surgeon with additional information about the tissue, thus optimizing the extent of tumor resection and minimizing the risk of local recurrences.

摘要

目的

在脑转移瘤的手术中,精确切除整个肿瘤组织对于降低局部复发至关重要。传统的术中成像技术在检测肿瘤残余物方面都存在局限性。因此,需要创新的新成像方法,如光学相干断层扫描(OCT)。本研究的目的是通过应用纹理分析和机器学习算法对 OCT 图像进行组织分类,在离体环境中区分脑转移瘤和健康脑组织。

方法

在切除脑转移瘤期间收集肿瘤和健康组织样本。使用 OCT 对样本进行成像。从 B 扫描中提取纹理特征。然后,应用基于主成分分析(PCA)和支持向量机(SVM)的机器学习算法对 OCT 扫描进行分类。作为金标准,一位经验丰富的病理学家对组织样本进行组织学检查,并确定每个样本中存活肿瘤、坏死和健康组织的百分比。共对 14 个组织样本的 14336 个 B 扫描进行了分类分析。

结果

我们能够以 95.75%的准确率区分存活肿瘤和健康脑组织。通过比较坏死组织和健康组织,得到了 99.10%的分类准确率。通过广义分类,脑转移瘤(存活肿瘤和坏死)和健康组织的准确率为 96.83%。

结论

使用 OCT 成像、提取的纹理特征和基于 PCA 和 SVM 的机器学习,可以对脑转移瘤和健康脑组织进行自动分类。所建立的方法可以为外科医生提供关于组织的额外信息,从而优化肿瘤切除的范围,最大限度地降低局部复发的风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f3a9/8354973/b343c0cafb59/11548_2021_2412_Fig1_HTML.jpg

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