Li Ka Shing Centre, Cancer Research UK Cambridge Institute.
Department of Pathology.
Ann Oncol. 2017 Aug 1;28(8):1832-1835. doi: 10.1093/annonc/mdx266.
We have previously shown lymphocyte density, measured using computational pathology, is associated with pathological complete response (pCR) in breast cancer. The clinical validity of this finding in independent studies, among patients receiving different chemotherapy, is unknown.
The ARTemis trial randomly assigned 800 women with early stage breast cancer between May 2009 and January 2013 to three cycles of docetaxel, followed by three cycles of fluorouracil, epirubicin and cyclophosphamide once every 21 days with or without four cycles of bevacizumab. The primary endpoint was pCR (absence of invasive cancer in the breast and lymph nodes). We quantified lymphocyte density within haematoxylin and eosin (H&E) whole slide images using our previously described computational pathology approach: for every detected lymphocyte the average distance to the nearest 50 lymphocytes was calculated and the density derived from this statistic. We analyzed both pre-treatment biopsies and post-treatment surgical samples of the tumour bed.
Of the 781 patients originally included in the primary endpoint analysis of the trial, 609 (78%) were included for baseline lymphocyte density analyses and a subset of 383 (49% of 781) for analyses of change in lymphocyte density. The main reason for loss of patients was the availability of digitized whole slide images. Pre-treatment lymphocyte density modelled as a continuous variable was associated with pCR on univariate analysis (odds ratio [OR], 2.92; 95% CI, 1.78-4.85; P < 0.001) and after adjustment for clinical covariates (OR, 2.13; 95% CI, 1.24-3.67; P = 0.006). Increased pre- to post-treatment lymphocyte density showed an independent inverse association with pCR (adjusted OR, 0.1; 95% CI, 0.033-0.31; P < 0.001).
Lymphocyte density in pre-treatment biopsies was validated as an independent predictor of pCR in breast cancer. Computational pathology is emerging as a viable and objective means of identifying predictive biomarkers for cancer patients.
CLINICALTRIALS.GOV: NCT01093235.
我们之前的研究表明,使用计算病理学测量的淋巴细胞密度与乳腺癌的病理完全缓解(pCR)相关。在接受不同化疗的患者中,这一发现的临床有效性在独立研究中尚不清楚。
ARTemis 试验于 2009 年 5 月至 2013 年 1 月期间随机分配 800 名早期乳腺癌女性接受三周期多西他赛,随后每 21 天接受三周期氟尿嘧啶、表柔比星和环磷酰胺,或加用四周期贝伐珠单抗。主要终点为 pCR(乳房和淋巴结中无浸润性癌)。我们使用我们之前描述的计算病理学方法对苏木精和伊红(H&E)全切片图像中的淋巴细胞密度进行量化:为每个检测到的淋巴细胞计算到最近的 50 个淋巴细胞的平均距离,并从该统计数据中得出密度。我们分析了治疗前活检和肿瘤床的术后手术样本。
在试验的主要终点分析中,最初纳入的 781 名患者中有 781 名(78%)纳入了基线淋巴细胞密度分析,其中 383 名(49%的 781 名)纳入了淋巴细胞密度变化的分析。患者丢失的主要原因是数字化全切片图像的可用性。在单变量分析中,预处理淋巴细胞密度作为连续变量与 pCR 相关(优势比 [OR],2.92;95%置信区间 [CI],1.78-4.85;P<0.001),并且在调整临床协变量后(OR,2.13;95%CI,1.24-3.67;P=0.006)。预处理到治疗后淋巴细胞密度的增加与 pCR 呈独立的负相关(调整后的 OR,0.1;95%CI,0.033-0.31;P<0.001)。
治疗前活检中的淋巴细胞密度被验证为乳腺癌 pCR 的独立预测因子。计算病理学正在成为识别癌症患者预测生物标志物的可行和客观手段。
临床试验.gov:NCT01093235。