Non-invasive screening for laryngeal cancer using the oral cavity as a proxy for differentiation of laryngeal cancer versus leukoplakia: A novel application of ESS technology and artificial intelligence supported statistical modeling

IF 1.8 4区 医学 Q2 OTORHINOLARYNGOLOGY
M. Sakharkar , G. Spokas , L. Berry , K. Daniels , P. Nithagon , E. Rodriguez-Diaz , L. Tracy , J.P. Noordzij , I. Bigio , G. Grillone , G.P. Krisciunas
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Abstract

Objective

This preliminary study tested whether non-invasive, remote Elastic Scattering Spectroscopy (ESS) measurements obtained in the oral cavity can be used as a proxy to accurately differentiate between patients with laryngeal cancer versus laryngeal leukoplakia.

Methods

20 patients with laryngeal lesions [cancer (n = 10),leukoplakia (n = 10)] were clinically assessed and categorized by otolaryngologists per standard clinical practice. Patient demographics of age, race, sex, and smoking history were collected. A machine-learning artificial intelligence (AI) algorithm was applied to classify patients using ESS spectra of patients with benign laryngeal leukoplakia or laryngeal cancer. Specificity, sensitivity, positive predictive value (PPV), negative predictive value (NPV), F1, and area-under-the-curve (AUC) were calculated. Additional algorithms stratified spectral data by sub-anatomical site and smoking status to explore diagnostic capability.

Results

Overall, the algorithm had a sensitivity = 74 %, specificity = 40 %, PPV = 51 %, NPV = 64 %, F1 = 0.61 and AUC = 0.65. When stratifying by former and active smokers, algorithm sensitivities increased to 85 % and 77 %. Analysis by sub-anatomic location yielded an AUC = 0.77 for lateral tongue, and when stratified by (former/current) smoking status, demonstrated AUC = 0.94 and 0.83, sensitivities = 98 % and 76 %, and specificities = 85 % and 86 %. Algorithm output from the mucosal lip yielded sensitivity = 89 %, specificity = 88 %, PPV = 83 %, and NPV = 92 % in former smokers.

Conclusion

This pilot study demonstrated ESS technology coupled with AI-assisted statistical modeling, could differentiate between patients with laryngeal leukoplakia versus cancer with good precision, especially with smoking status and anatomic subclassification. If ESS can be utilized in the oral cavity as a non-invasive screening tool for laryngeal cancer, it would greatly facilitate early detection in specialized/non-specialized clinics, and under-resourced regions.
使用口腔作为喉癌与白斑鉴别的代理的无创喉癌筛查:ESS技术和人工智能支持的统计建模的新应用。
目的:本初步研究测试了在口腔中获得的无创、远程弹性散射光谱(ESS)测量是否可以作为准确区分喉癌和喉白斑患者的代理。方法:对20例喉部病变患者[癌(n = 10)、白斑(n = 10)]进行临床评估,由耳鼻喉科医师按标准临床操作进行分类。收集患者的年龄、种族、性别和吸烟史。采用机器学习人工智能(AI)算法对良性喉白斑或喉癌患者的ESS谱进行分类。计算特异性、敏感性、阳性预测值(PPV)、阴性预测值(NPV)、F1和曲线下面积(AUC)。另外的算法分层光谱数据按亚解剖部位和吸烟状况来探索诊断能力。结果:总体而言,该算法的敏感性为74%,特异性为40%,PPV = 51%, NPV = 64%, F1 = 0.61, AUC = 0.65。当按戒烟者和活跃吸烟者进行分层时,算法灵敏度分别提高到85%和77%。亚解剖位置分析显示,侧舌的AUC = 0.77,当按(以前/现在)吸烟状况分层时,AUC = 0.94和0.83,敏感性= 98%和76%,特异性= 85%和86%。在前吸烟者中,粘膜唇的算法输出的灵敏度= 89%,特异性= 88%,PPV = 83%, NPV = 92%。结论:本初步研究表明,ESS技术与人工智能辅助统计建模相结合,可以很好地区分喉白斑与癌患者,特别是吸烟状况和解剖亚分类。如果ESS可以作为一种无创的口腔喉癌筛查工具,将极大地促进专科/非专科诊所和资源不足地区的早期发现。
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来源期刊
American Journal of Otolaryngology
American Journal of Otolaryngology 医学-耳鼻喉科学
CiteScore
4.40
自引率
4.00%
发文量
378
审稿时长
41 days
期刊介绍: Be fully informed about developments in otology, neurotology, audiology, rhinology, allergy, laryngology, speech science, bronchoesophagology, facial plastic surgery, and head and neck surgery. Featured sections include original contributions, grand rounds, current reviews, case reports and socioeconomics.
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