Mascharak Shamik, Baird Brandon J, Holsinger F Christopher
Division of Head and Neck Surgery, Department of Otolaryngology, School of Medicine, Stanford University, Palo Alto, California, U.S.A.
Laryngoscope. 2018 Nov;128(11):2514-2520. doi: 10.1002/lary.27159. Epub 2018 Mar 25.
To determine if multispectral narrow-band imaging (mNBI) can be used for automated, quantitative detection of oropharyngeal carcinoma (OPC).
Prospective cohort study.
Multispectral narrow-band imaging and white light endoscopy (WLE) were used to examine the lymphoepithelial tissues of the oropharynx in a preliminary cohort of 30 patients (20 with biopsy-proven OPC, 10 healthy). Low-level image features from five patients were then extracted to train naïve Bayesian classifiers for healthy and malignant tissue.
Tumors were classified by color features with 65.9% accuracy, 66.8% sensitivity, and 64.9% specificity under mNBI. In contrast, tumors were classified with 52.3% accuracy (P = 0.0108), 44.8% sensitivity (P = 0.0793), and 59.9% specificity (P = 0.312) under WLE. Receiver operating characteristic analysis yielded areas under the curve (AUC) of 72.3% and 54.6% for classification under mNBI and WLE, respectively (P = 0.00168). For classification by both color and texture features, AUC under mNBI increased (80.1%, P = 0.00230) but did not improve under WLE (below 55% for both models, P = 0.180). Cross-validation with five folds yielded an AUC above 80% for both mNBI models and below 55% for both WLE models (P = 0.0000410 and 0.000116).
Compared to WLE, mNBI significantly enhanced the performance of a naïve Bayesian classifier trained on low-level image features of oropharyngeal mucosa. These findings suggest that automated clinical detection of OPC might be used to enhance surgical vision, improve early diagnosis, and allow for high-throughput screening.
NA. Laryngoscope, 2514-2520, 2018.
确定多光谱窄带成像(mNBI)是否可用于口咽癌(OPC)的自动定量检测。
前瞻性队列研究。
使用多光谱窄带成像和白光内镜检查(WLE)对30例患者(20例经活检证实为OPC,10例健康)的口咽淋巴上皮组织进行检查。然后从5例患者中提取低水平图像特征,以训练用于健康组织和恶性组织的朴素贝叶斯分类器。
在mNBI下,根据颜色特征对肿瘤进行分类的准确率为65.9%,灵敏度为66.8%,特异性为64.9%。相比之下,在WLE下,肿瘤分类的准确率为52.3%(P = 0.0108),灵敏度为44.8%(P = 0.0793),特异性为59.9%(P = 0.312)。受试者工作特征分析得出,mNBI和WLE分类的曲线下面积(AUC)分别为72.3%和54.6%(P = 0.00168)。对于通过颜色和纹理特征进行分类,mNBI下的AUC增加(80.1%,P = 0.00230),但WLE下未改善(两种模型均低于55%,P = 0.180)。五折交叉验证得出,两种mNBI模型的AUC均高于80%,两种WLE模型的AUC均低于55%(P = 0.0000410和0.000116)。
与WLE相比,mNBI显著提高了基于口咽黏膜低水平图像特征训练的朴素贝叶斯分类器性能。这些发现表明,OPC的自动临床检测可能用于增强手术视野、改善早期诊断并实现高通量筛查。
无。《喉镜》,2514 - 2520,2018年。