Conventional cytology cannot discriminate between benign and malignant follicular neoplasms. Our study evaluated the diagnostic role of computer-assisted image analysis in the presurgical assessment of thyroid follicular neoplasms. Fifty-eight patients (14 males, 44 females, age range, 45-75 years) who underwent surgery for cytologic diagnosis of thyroid follicular neoplasm were studied. All patients were first evaluated on clinical grounds and assigned a high/low suspicion of malignancy on the basis of gender, age, and nodule size. Cell image analysis was subsequently performed using a Cytometrica BYK Gulden microscope image processor on Feulgen-stained thyroid cytologic smears. A different population of 50 benign and 50 malignant, histologically evaluated nodules was studied in order to establish image analysis criteria suggestive of thyroid malignancy. Ploidy histogram, proliferation index (PI), nuclear area coefficient of variation (NACV), and anisocariosis ratio (AR) were studied. Thyroid cancer was diagnosed in 16 of 58 follicular neoplasms. Only 7 of these lesions were clinically suspicious (43.7%), whereas 14 of 16 (87.5%) malignant tumors were identified by image analysis. Positive and negative predictive values of image analysis versus clinical evaluation were 46.6% versus 30.4% and 92.8% versus 74.3%, respectively. The distribution of ploidy pattern was different in benign versus malignant follicular neoplasms (chi2 8.25, p = 0.016), malignant lesions showing an increased frequency of heteroclonal aneuploid DNA content (37.5% vs. 7.1%). Increased PI (mean +/- standard deviation (SD) = 11.3 +/- 5.7 vs. 7.1 +/- 6.1; p < 0.01) and NACV (mean +/- SD = 25.28 +/- 1.89 vs. 20.14 0.91; p < 0.01) levels were also observed in malignant follicular neoplasms. In conclusion, computer-assisted image analysis may profitably support clinical evaluation in the assessment of thyroid follicular neoplasms.

译文

:常规细胞学不能区分良性和恶性滤泡性肿瘤。我们的研究评估了计算机辅助图像分析在甲状腺滤泡性肿瘤术前评估中的诊断作用。研究了58例接受甲状腺滤泡性肿瘤细胞学诊断手术的患者(男14例,女44例,年龄范围45-75岁)。首先对所有患者进行临床评估,并根据性别,年龄和结节大小对肿瘤进行高/低怀疑。随后使用Cytometrica BYK Gulden显微镜图像处理器对Feulgen染色的甲状腺细胞学涂片进行细胞图像分析。为了确定影像学分析标准提示甲状腺恶性,研究了50个良性和50个恶性,经组织学评估的结节的不同人群。研究了倍性直方图,增殖指数(PI),核面积变异系数(NACV)和异龋率(AR)。 58例滤泡性肿瘤中有16例被诊断为甲状腺癌。这些病变中只有7个在临床上可疑(43.7%),而通过图像分析确定了16个恶性肿瘤中的14个(87.5%)。图像分析相对于临床评估的阳性和阴性预测值分别为46.6%,30.4%和92.8%,74.3%。在良性和恶性滤泡性肿瘤中,倍性模式的分布是不同的(chi2 8.25,p = 0.016),恶性病变显示异源非整倍体DNA含量增加的频率(37.5%比7.1%)。 PI(平均/标准差(SD)= 11.3 /-5.7 vs. 7.1 /-6.1; p <0.01)和NACV(平均SD = 25.28 /-1.89 vs.20.14 0.91; p <0.01)升高在恶性滤泡性肿瘤中也观察到。总之,计算机辅助图像分析可能有益地支持甲状腺滤泡性肿瘤评估中的临床评估。

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