Guan Steven, Mehta Bella, Slater David, Thompson James R, DiCarlo Edward, Pannellini Tania, Pearce-Fisher Diyu, Zhang Fan, Raychaudhuri Soumya, Hale Caryn, Jiang Caroline S, Goodman Susan, Orange Dana E
The MITRE Corporation, McLean, Virginia.
Hospital for Special Surgery, New York, New York.
ACR Open Rheumatol. 2022 Apr;4(4):322-331. doi: 10.1002/acr2.11381. Epub 2022 Jan 10.
We quantified inflammatory burden in rheumatoid arthritis (RA) synovial tissue by using computer vision to automate the process of counting individual nuclei in hematoxylin and eosin images.
We adapted and applied computer vision algorithms to quantify nuclei density (count of nuclei per unit area of tissue) on synovial tissue from arthroplasty samples. A pathologist validated algorithm results by labeling nuclei in synovial images that were mislabeled or missed by the algorithm. Nuclei density was compared with other measures of RA inflammation such as semiquantitative histology scores, gene-expression data, and clinical measures of disease activity.
The algorithm detected a median of 112,657 (range 8,160-821,717) nuclei per synovial sample. Based on pathologist-validated results, the sensitivity and specificity of the algorithm was 97% and 100%, respectively. The mean nuclei density calculated by the algorithm was significantly higher (P < 0.05) in synovium with increased histology scores for lymphocytic inflammation, plasma cells, and lining hyperplasia. Analysis of RNA sequencing identified 915 significantly differentially expressed genes in correlation with nuclei density (false discovery rate is less than 0.05). Mean nuclei density was significantly higher (P < 0.05) in patients with elevated levels of C-reactive protein, erythrocyte sedimentation rate, rheumatoid factor, and cyclized citrullinated protein antibody.
Nuclei density is a robust measurement of inflammatory burden in RA and correlates with multiple orthogonal measurements of inflammation.
我们通过使用计算机视觉技术来自动计数苏木精和伊红染色图像中的单个细胞核,从而对类风湿性关节炎(RA)滑膜组织中的炎症负荷进行量化。
我们采用并应用计算机视觉算法来量化关节置换术样本滑膜组织中的细胞核密度(每单位组织面积的细胞核计数)。一名病理学家通过对算法错误标记或遗漏的滑膜图像中的细胞核进行标记,来验证算法结果。将细胞核密度与RA炎症的其他指标进行比较,如半定量组织学评分、基因表达数据和疾病活动的临床指标。
该算法在每个滑膜样本中检测到的细胞核中位数为112,657个(范围为8,160 - 到821,717个)。根据病理学家验证的结果,该算法的灵敏度和特异性分别为97%和100%。对于淋巴细胞炎症、浆细胞和衬里增生的组织学评分增加的滑膜,算法计算出的平均细胞核密度显著更高(P < 0.05)。RNA测序分析确定了915个与细胞核密度相关的显著差异表达基因(错误发现率小于0.05)。在C反应蛋白、红细胞沉降率、类风湿因子和环瓜氨酸化蛋白抗体水平升高的患者中,平均细胞核密度显著更高(P < 0.05)。
细胞核密度是RA炎症负荷的可靠测量指标,并且与多种炎症的正交测量指标相关。