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首页> 外文期刊>Oral oncology >Construction of mass spectra database and diagnosis algorithm for head and neck squamous cell carcinoma
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Construction of mass spectra database and diagnosis algorithm for head and neck squamous cell carcinoma

机译:头部鳞状细胞癌的质谱数据库与诊断算法的构建

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Highlights ? A diagnostic system combining PESI-MS and machine learning discriminated HNSCC. ? Predictive accuracies were 90.48% and 95.35% in positive- and negative-ion modes. ? Acquisition of mass spectra from a sample took 5?min. ? Tumor borders were determined by this system with pathological consensus. ? The system may be applicable to routine intraoperative rapid assessment of HNSCC. Abstract Objectives Intraoperative identification of tumor margins is essential to achieving complete tumor resection. However, the process of intraoperative pathological diagnosis involves cumbersome procedures, such as preparation of cryosections and microscopic examination, thus requiring more than 30?min. Moreover, intraoperative diagnoses made by examining cryosections are occasionally inconsistent with postoperative diagnoses made by examining paraffin-embedded sections because the former are of poorer quality. We sought to establish a more rapid accurate method of intraoperative assessment. Materials and methods A diagnostic algorithm of head and neck squamous cell carcinoma (HNSCC) using machine learning was constructed by mass spectra obtained from 15 non-cancerous and 19 HNSCC specimens by probe electrospray ionization mass spectrometry (PESI-MS). The clinical validity of this system was evaluated using intraoperative specimens of HNSCC and normal mucosa. Results A total of 114 and 141 mass spectra were acquired from non-cancerous and cancerous specimens, respectively, using both positive- and negative-ion modes of PESI-MS. These data were fed into partial least squares-logistic regression (PLS-LR) to discriminate tumor-specific spectral patterns. Leave-one-patient-out cross validation of this algorithm in positive- and negative-ion modes showed accuracies in HNSCC diagnosis of 90.48% and 95.35%, respectively. In intraoperative specimens of HNSCC, this algorithm precisely defined the borders of the cancerous regions; these corresponded with those determined by examining histologic sections. The procedure took approximately 5?min. Conclusion This diagnostic system, based on machine learning, enables accurate discrimination of cancerous regions and has the potential to provide rapid intraoperative assessment of HNSCC margins.
机译:强调 ? PESI-MS和机器学习结合的诊断系统区分HNSCC。还在正极和负离子模式中,预测精度为90.48%和95.35%。还从样品中获取质谱时间5?分钟。还肿瘤边界由该系统确定具有病理学共识。还该系统可适用于HNSCC的常规术中快速评估。摘要目的对肿瘤余量的术语鉴定对于实现完全肿瘤切除至关重要。然而,术后病理诊断的过程涉及繁琐的程序,例如制备低温和微观检查,从而需要30多个?分钟。此外,通过检查冷冻乳菌制备的术中诊断偶然是通过检查石蜡嵌入部分制备的术后诊断,因为前者质量较差。我们试图建立一种更快速的术中评估方法。材料和方法使用机器学习的头部和颈部鳞状细胞癌(HNSCC)的诊断算法由探针电喷雾电离质谱(Pesi-MS)由15个非癌变和19个HNSCC标本获得的质谱构成。使用HNSCC和正常粘膜的术中标本评估该系统的临床效力。结果总共114和141个质谱,分别使用Pesi-MS的正和负离子模式从非癌变和癌症标本中获得。将这些数据馈入部分最小二乘逻辑回归(PLS-LR)以区分肿瘤特异性光谱图案。在正面和负离子模式下留下这种算法的一患病率交叉验证,HNSCC诊断分别为90.48%和95.35%的精度。在HNSCC的术中标本中,该算法精确地定义了癌症地区的边界;这些与通过检查组织学部分确定的那些相对应。该程序大约需要5个?分钟。结论该诊断系统基于机器学习,可以准确地辨别癌症地区,并有可能提供HNSCC边缘的快速术中评估。

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