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用于检测人类喉黏膜改变的高光谱混合方法分类。

Hyperspectral hybrid method classification for detecting altered mucosa of the human larynx.

机构信息

Laboratory for Climatology and Remote Sensing, Faculty of Geography, University of Marburg, Marburg 35037, Germany.

出版信息

Int J Health Geogr. 2012 Jun 21;11:21. doi: 10.1186/1476-072X-11-21.

Abstract

BACKGROUND

In the field of earth observation, hyperspectral detector systems allow precise target detections of surface components from remote sensing platforms. This enables specific land covers to be identified without the need to physically travel to the areas examined. In the medical field, efforts are underway to develop optical technologies that detect altering tissue surfaces without the necessity to perform an excisional biopsy. With the establishment of expedient classification procedures, hyperspectral imaging may provide a non-invasive diagnostic method that allows determination of pathological tissue with high reliability. In this study, we examined the performance of a hyperspectral hybrid method classification for the automatic detection of altered mucosa of the human larynx.

MATERIALS AND METHODS

Hyperspectral Imaging was performed in vivo and 30 bands from 390 to 680 nm for 5 cases of laryngeal disorders (2x hemorrhagic polyp, 3x leukoplakia) were obtained. Image stacks were processed with unsupervised clustering (linear spectral unmixing), spectral signatures were extracted from unlabeled cluster maps and subsequently applied as end-members for supervised classification (spectral angle mapper) of further medical cases with identical diagnosis.

RESULTS

Linear spectral unmixing clearly highlighted altered mucosa as single spectral clusters in all cases. Matching classes were identified, and extracted spectral signatures could readily be applied for supervised classifications. Automatic target detection performed well, as the considered classes showed notable correspondence with pathological tissue locations.

CONCLUSIONS

Using hyperspectral classification procedures derived from remote sensing applications for diagnostic purposes can create concrete benefits for the medical field. The approach shows that it would be rewarding to collect spectral signatures from histologically different lesions of laryngeal disorders in order to build up a spectral library and to prospectively allow non-invasive optical biopsies.

摘要

背景

在地球观测领域,高光谱探测器系统允许从遥感平台精确探测地表成分,从而实现无需实地考察即可识别特定的地表覆盖。在医学领域,人们正在努力开发光学技术,以实现无需进行切除活检即可检测组织表面的变化。通过建立便捷的分类程序,高光谱成像可能提供一种非侵入性的诊断方法,能够以高可靠性确定病理性组织。在本研究中,我们研究了高光谱混合分类方法在自动检测人类喉黏膜病变中的性能。

材料和方法

在体进行高光谱成像,获得 5 例喉部疾病(2x 出血性息肉,3x 白斑病)的 390 至 680nm 波段共 30 个光谱带。对图像堆栈进行无监督聚类(线性光谱解混)处理,从无标签聚类图中提取光谱特征,并将其作为具有相同诊断的进一步医学病例的监督分类(光谱角映射器)的端元应用。

结果

线性光谱解混在所有病例中均清晰地突出显示了病变的黏膜作为单一光谱簇。匹配的类别被识别,并且可以轻松地应用提取的光谱特征进行监督分类。自动目标检测效果良好,因为所考虑的类别与病理组织位置明显对应。

结论

将源自遥感应用的高光谱分类程序用于诊断目的,可以为医学领域带来具体的益处。该方法表明,从喉部疾病的组织学不同病变中收集光谱特征以建立光谱库,并前瞻性地允许进行非侵入性的光学活检,将是值得的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d3d6/3787854/702252b7410f/1476-072X-11-21-1.jpg

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