Hyperspectral imaging with machine learning for in vivo skin carcinoma margin assessment: a preliminary study.

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL Physical and Engineering Sciences in Medicine Pub Date : 2024-09-01 Epub Date: 2024-05-21 DOI:10.1007/s13246-024-01435-8
Sorin Viorel Parasca, Mihaela Antonina Calin, Dragos Manea, Roxana Radvan
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Abstract

Surgical excision is the most effective treatment of skin carcinomas (basal cell carcinoma or squamous cell carcinoma). Preoperative assessment of tumoral margins plays a decisive role for a successful result. The aim of this work was to evaluate the possibility that hyperspectral imaging could become a valuable tool in solving this problem. Hyperspectral images of 11 histologically diagnosed carcinomas (six basal cell carcinomas and five squamous cell carcinomas) were acquired prior clinical evaluation and surgical excision. The hyperspectral data were then analyzed using a newly developed method for delineating skin cancer tumor margins. This proposed method is based on a segmentation process of the hyperspectral images into regions with similar spectral and spatial features, followed by a machine learning-based data classification process resulting in the generation of classification maps illustrating tumor margins. The Spectral Angle Mapper classifier was used in the data classification process using approximately 37% of the segments as the training sample, the rest being used for testing. The receiver operating characteristic was used as the method for evaluating the performance of the proposed method and the area under the curve as a metric. The results revealed that the performance of the method was very good, with median AUC values of 0.8014 for SCCs, 0.8924 for BCCs, and 0.8930 for normal skin. With AUC values above 0.89 for all types of tissue, the method was considered to have performed very well. In conclusion, hyperspectral imaging can become an objective aid in the preoperative evaluation of carcinoma margins.

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高光谱成像与机器学习用于体内皮肤癌边缘评估:初步研究。
手术切除是治疗皮肤癌(基底细胞癌或鳞状细胞癌)最有效的方法。术前对肿瘤边缘的评估对取得成功结果起着决定性作用。这项工作的目的是评估高光谱成像是否有可能成为解决这一问题的重要工具。在临床评估和手术切除之前,对 11 个经组织学诊断的癌瘤(6 个基底细胞癌和 5 个鳞状细胞癌)采集了高光谱图像。然后使用新开发的皮肤癌肿瘤边缘划分方法对高光谱数据进行分析。该方法基于将高光谱图像分割成具有相似光谱和空间特征的区域,然后进行基于机器学习的数据分类,最终生成说明肿瘤边缘的分类图。在数据分类过程中使用了光谱角度绘图器分类器,将大约 37% 的片段作为训练样本,其余的用于测试。使用接收者操作特征作为评估所提方法性能的方法,并使用曲线下面积作为衡量指标。结果显示,该方法的性能非常好,SCC 的 AUC 中值为 0.8014,BCC 为 0.8924,正常皮肤为 0.8930。所有类型组织的 AUC 值均高于 0.89,因此认为该方法表现非常出色。总之,高光谱成像可以成为术前评估癌边缘的客观辅助工具。
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CiteScore
8.40
自引率
4.50%
发文量
110
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