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首页> 外文期刊>Analytical chemistry >Raman Spectroscopy Applied to Parathyroid Tissues: A New Diagnostic Tool to Discriminate Normal Tissue from Adenoma
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Raman Spectroscopy Applied to Parathyroid Tissues: A New Diagnostic Tool to Discriminate Normal Tissue from Adenoma

机译:拉曼光谱应用于甲状旁腺组织:一种以鉴别腺瘤的正常组织的新诊断工具

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摘要

Primary hyperparathyroidism is an endocrine disorder characterized by autonomous production of parathyroid hormone. Patients with the symptomatic disease should be referred for parathyroidectomy. However, the distinction between the pathological condition and the benign one is very challenging in the surgical setting; therefore, accurate recognition is important to ensure success during minimally invasive surgery. At present, all intraoperative techniques significantly increase surgical time and, consequently, cost. In this proof-of-concept study, Raman microscopy was used to differentiate between healthy parathyroid tissue and parathyroid adenoma from 18 patients. The data showed different spectroscopic features for the two main tissue types of healthy and adenoma. Moreover, the parathyroid adenoma subtypes (chief cells and oxyphil cells) were characterized by their own Raman spectra. The partial least squares discriminant analysis (PLS-DA) model built to discriminate healthy from adenomatous parathyroid tissue was able to correctly classify all samples in the calibration and validation data sets, providing 100% prediction accuracy. The PLS-DA model built to adenoma from oxyphil cell adenoma allowed us to correctly classify 99% of the spectra during calibration and cross-validation and to correctly predict 100% of oxyphil and 99.8% of chief cells in the external validation data set. The results clearly demonstrate the great potential of Raman spectroscopy. The final goal would be development of a Raman portable fiber probe device for intraoperative optical biopsy, both to improve the surgical success rate and reduce surgical cost.
机译:原发性甲状旁腺功能亢进是一种内分泌疾病,其特征在于甲状旁腺激素的自主生产。患有症状疾病的患者应提及甲状旁腺切除术。然而,在手术环境中,病理状况和良性的区别非常具有挑战性;因此,准确的识别对于在微创手术期间确保成功是重要的。目前,所有术中技术都显着提高了手术时间,从而提高了成本。在该概念证明研究中,拉曼显微镜检查用于区分18名患者的健康甲状旁腺组织和甲状旁腺腺瘤。该数据显示出两种主要组织类型的健康和腺瘤的光谱特征。此外,通过其自身的拉曼光谱表征甲状旁腺腺瘤亚型(主要细胞和烟碱细胞)。构建的局部最小二乘判别分析(PLS-DA)模型以鉴别腺瘤性甲状旁腺组织的健康,能够在校准和验证数据集中正确分类所有样本,提供100%的预测精度。从烟草细胞腺瘤的腺瘤构建的PLS-DA模型使我们能够在校准和交叉验证期间正确分类和GT; 99%的光谱,并在外部验证数据集中正确预测100%的100%的毒物和99.8%的主要细胞。结果清楚地证明了拉曼光谱的巨大潜力。最终目标是开发用于术中光学活检的拉曼便携式光纤探针装置,既可提高手术成功率,减少手术成本。

著录项

  • 来源
    《Analytical chemistry》 |2018年第1期|共8页
  • 作者单位

    Campus Biomed Univ Unit Endocrinol &

    Diabet Via Alvaro del Portillo 200 I-00128 Rome Italy;

    CNR ISM Via Fosso Cavaliere 100 I-00133 Rome Italy;

    Campus Biomed Univ Unit Endocrinol &

    Diabet Via Alvaro del Portillo 200 I-00128 Rome Italy;

    Univ Roma La Sapienza Dipartimento Chim Piazzale Aldo Moro 5 I-00185 Rome Italy;

    CNR ISM Via Fosso Cavaliere 100 I-00133 Rome Italy;

    Campus Biomed Univ Unit Endocrinol &

    Diabet Via Alvaro del Portillo 200 I-00128 Rome Italy;

    Campus Biomed Univ Unit Neck &

    Chest Surg Via Alvaro del Portillo 200 I-00128 Rome Italy;

    Campus Biomed Univ Unit Endocrinol &

    Diabet Via Alvaro del Portillo 200 I-00128 Rome Italy;

    Hosp Santa Maria Goretti Malattie Tiroide &

    Osteometab Via Canova I-04100 Latina Italy;

    Campus Biomed Univ Unit Pathol Via Alvaro del Portillo 200 I-00128 Rome Italy;

    Campus Biomed Univ Unit Pathol Via Alvaro del Portillo 200 I-00128 Rome Italy;

    Thermo Fisher Sci Str Rivoltana I-20090 Milan Italy;

    Campus Biomed Univ Unit Endocrinol &

    Diabet Via Alvaro del Portillo 200 I-00128 Rome Italy;

    Campus Biomed Univ Unit Neck &

    Chest Surg Via Alvaro del Portillo 200 I-00128 Rome Italy;

    Campus Biomed Univ Unit Endocrinol &

    Diabet Via Alvaro del Portillo 200 I-00128 Rome Italy;

    Campus Biomed Univ Unit Pathol Via Alvaro del Portillo 200 I-00128 Rome Italy;

    CNR ISM Via Fosso Cavaliere 100 I-00133 Rome Italy;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
  • 关键词

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