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使用定量相位成像预测前列腺癌复发:在普通人群中的验证

Prediction of prostate cancer recurrence using quantitative phase imaging: Validation on a general population.

作者信息

Sridharan Shamira, Macias Virgilia, Tangella Krishnarao, Melamed Jonathan, Dube Emily, Kong Max Xiangtian, Kajdacsy-Balla André, Popescu Gabriel

机构信息

Quantitative Light Imaging Laboratory, Department of Bioengineering, Beckman Institute of Advanced Science and Technology, University of Illinois at Urbana-Champaign, 405N. Matthews Avenue, Urbana, IL 61801, USA.

Department of Pathology, University of Illinois at Chicago, 840S. Wood Street, Chicago, IL 60612, USA.

出版信息

Sci Rep. 2016 Sep 23;6:33818. doi: 10.1038/srep33818.

Abstract

Prediction of biochemical recurrence risk of prostate cancer following radical prostatectomy is critical for determining whether the patient would benefit from adjuvant treatments. Various nomograms exist today for identifying individuals at higher risk for recurrence; however, an optimistic under-estimation of recurrence risk is a common problem associated with these methods. We previously showed that anisotropy of light scattering measured using quantitative phase imaging, in the stromal layer adjacent to cancerous glands, is predictive of recurrence. That nested-case controlled study consisted of specimens specifically chosen such that the current prognostic methods fail. Here we report on validating the utility of optical anisotropy for prediction of prostate cancer recurrence in a general population of 192 patients, with 17% probability of recurrence. Our results show that our method can identify recurrent cases with 73% sensitivity and 72% specificity, which is comparable to that of CAPRA-S, a current state of the art method, in the same population. However, our results show that optical anisotropy outperforms CAPRA-S for patients with Gleason grades 7-10. In essence, we demonstrate that anisotropy is a better biomarker for identifying high-risk cases, while Gleason grade is better suited for selecting non-recurrence. Therefore, we propose that anisotropy and current techniques be used together to maximize prediction accuracy.

摘要

前列腺癌根治术后生化复发风险的预测对于确定患者是否能从辅助治疗中获益至关重要。目前存在各种列线图用于识别复发风险较高的个体;然而,这些方法普遍存在对复发风险乐观低估的问题。我们之前表明,使用定量相成像测量的癌旁基质层光散射各向异性可预测复发。那项巢式病例对照研究使用的标本经过特意挑选,以使当前的预后方法失效。在此,我们报告在192例复发概率为17%的普通患者群体中验证光各向异性对前列腺癌复发预测效用的情况。我们的结果显示,我们的方法识别复发病例的灵敏度为73%,特异度为72%,在同一群体中与当前的先进方法CAPRA - S相当。然而,我们的结果表明,对于 Gleason 分级为7 - 10级的患者,光各向异性优于CAPRA - S。本质上,我们证明各向异性是识别高危病例的更好生物标志物,而Gleason分级更适合筛选非复发病例。因此,我们建议将各向异性与当前技术结合使用,以最大限度提高预测准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/15fc/5034339/783824acd202/srep33818-f1.jpg

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