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首页> 外文期刊>PLoS Medicine >Identification of intraductal carcinoma of the prostate on tissue specimens using Raman micro-spectroscopy: A diagnostic accuracy case–control study with multicohort validation
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Identification of intraductal carcinoma of the prostate on tissue specimens using Raman micro-spectroscopy: A diagnostic accuracy case–control study with multicohort validation

机译:用拉曼微光谱法鉴定组织标本前列腺内癌:多层验证的诊断精度案例控制研究

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Background Prostate cancer (PC) is the most frequently diagnosed cancer in North American men. Pathologists are in critical need of accurate biomarkers to characterize PC, particularly to confirm the presence of intraductal carcinoma of the prostate (IDC-P), an aggressive histopathological variant for which therapeutic options are now available. Our aim was to identify IDC-P with Raman micro-spectroscopy (RμS) and machine learning technology following a protocol suitable for routine clinical histopathology laboratories. Methods and findings We used RμS to differentiate IDC-P from PC, as well as PC and IDC-P from benign tissue on formalin-fixed paraffin-embedded first-line radical prostatectomy specimens (embedded in tissue microarrays [TMAs]) from 483 patients treated in 3 Canadian institutions between 1993 and 2013. The main measures were the presence or absence of IDC-P and of PC, regardless of the clinical outcomes. The median age at radical prostatectomy was 62 years. Most of the specimens from the first cohort (Centre hospitalier de l’Université de Montréal) were of Gleason score 3 3 = 6 (51%) while most of the specimens from the 2 other cohorts (University Health Network and Centre hospitalier universitaire de Québec–Université Laval) were of Gleason score 3 4 = 7 (51% and 52%, respectively). Most of the 483 patients were pT2 stage (44%–69%), and pT3a (22%–49%) was more frequent than pT3b (9%–12%). To investigate the prostate tissue of each patient, 2 consecutive sections of each TMA block were cut. The first section was transferred onto a glass slide to perform immunohistochemistry with H&E counterstaining for cell identification. The second section was placed on an aluminum slide, dewaxed, and then used to acquire an average of 7 Raman spectra per specimen (between 4 and 24 Raman spectra, 4 acquisitions/TMA core). Raman spectra of each cell type were then analyzed to retrieve tissue-specific molecular information and to generate classification models using machine learning technology. Models were trained and cross-validated using data from 1 institution. Accuracy, sensitivity, and specificity were 87% ± 5%, 86% ± 6%, and 89% ± 8%, respectively, to differentiate PC from benign tissue, and 95% ± 2%, 96% ± 4%, and 94% ± 2%, respectively, to differentiate IDC-P from PC. The trained models were then tested on Raman spectra from 2 independent institutions, reaching accuracies, sensitivities, and specificities of 84% and 86%, 84% and 87%, and 81% and 82%, respectively, to diagnose PC, and of 85% and 91%, 85% and 88%, and 86% and 93%, respectively, for the identification of IDC-P. IDC-P could further be differentiated from high-grade prostatic intraepithelial neoplasia (HGPIN), a pre-malignant intraductal proliferation that can be mistaken as IDC-P, with accuracies, sensitivities, and specificities 95% in both training and testing cohorts. As we used stringent criteria to diagnose IDC-P, the main limitation of our study is the exclusion of borderline, difficult-to-classify lesions from our datasets. Conclusions In this study, we developed classification models for the analysis of RμS data to differentiate IDC-P, PC, and benign tissue, including HGPIN. RμS could be a next-generation histopathological technique used to reinforce the identification of high-risk PC patients and lead to more precise diagnosis of IDC-P.
机译:背景前列腺癌(PC)是北美男性最常见的癌症。病理学家均致力于精确的生物标志物来表征PC,特别是确认前列腺内癌的存在(IDC-P),现在可以提供治疗选择的侵袭性组织病理学变体。我们的目的是在适用于常规临床组织病理学实验室的协议后识别使用拉曼微光谱(RμS)和机器学习技术的IDC-P。方法和发现我们使用Rμs与PC的IDC-P不同,以及从福尔马林固定的石蜡嵌入的一线自由基前列腺切除术样品上的良性组织(嵌入组织微阵列[TMA])中的PC和IDC-P.来自483名患者1993年至2013年间三国机构治疗。主要措施是IDC-P和PC的存在,无论临床结果如何。激进前列腺切除术的中位年龄为62岁。来自第一个队列的大多数标本(Center Shieventier de L'UniversitédeMontréal)是Gleason得分3 3 = 6(51%),而来自2个其他队列的大多数标本(大学健康网络和中心住院主人大学-universitéAval)是Gleason得分3 4 = 7(分别为51%和52%)。 483名患者中的大部分是PT2阶段(44%-69%),PT3A(22%-49%)比Pt3b更频繁(9%-12%)。为了研究每位患者的前列腺组织,切割每种TMA块的2个连续部分。将第一部分转移到载玻片上,以进行免疫组织化学,其与H&E备受沉备占细胞鉴定。将第二部分置于铝载玻片上,脱蜡,然后用于每样本(4至24个拉曼光谱,4个采集/ TMA核心之间的平均7种拉曼光谱。然后分析每个细胞类型的拉曼光谱以检测组织特异性分子信息,并使用机器学习技术产生分类模型。使用1个机构的数据培训并交叉验证模型。精度,敏感性和特异性分别为87%±5%,86%±6%和89%±8%,以区分PC从良性组织区分,95%±2%,96%±4%和94分别为PC的%±2%以区分IDC-P.然后在2个独立机构的拉曼光谱上测试训练有素的模型,达到84%和86%,84%和87%,81%和82%的特异性,分别诊断PC和85个%和91%,85%和88%,86%和93%,用于鉴定IDC-P。 IDC-P可以进一步与高级前列腺上皮内瘤周期(HGGPIN)分化,使训练和测试队列中的精度,敏感性和特异性误认为是IDC-P的恶性脑内增殖。随着我们使用严格的标准来诊断IDC-P,我们的研究的主要限制是排除边界,难以对我们数据集的病变。结论在本研究中,我们开发了分类模型,用于分析Rμs数据,以区分IDC-P,PC和良性组织,包括HGPIN。 RμS可以是下一代组织病理学技术,用于增强高风险PC患者的鉴定,导致IDC-P的更精确诊断。

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