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首页> 外文期刊>Cytopathology >Cytomorphological criteria for separation of pulmonary adenocarcinomas from squamous cell carcinomas: A statistical learning approach
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Cytomorphological criteria for separation of pulmonary adenocarcinomas from squamous cell carcinomas: A statistical learning approach

机译:从鳞状细胞癌中分离肺腺癌的细胞骨髓标准:统计学习方法

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Abstract Background Current therapy requires separation of non‐small cell carcinomas into adenocarcinomas ( AC ) and squamous cell carcinomas ( SCC ). A meta‐analysis has shown a pooled diagnostic sensitivity of 63% and specificity of 95% for the diagnosis of AC . While a number of cytomorphological features have been proposed for separation of AC from SCC , we are unaware of a statistically based analysis of cytomorphological features useful for separation of these two carcinomas. We performed logistic regression analysis of cytological features useful in classifying SCC and AC . Design Sixty‐one Papanicolaou‐stained fine needle aspiration specimens (29 AC /32 SCC ) were reviewed by two board‐certified cytopathologists for nine features (eccentric nucleoli, vesicular chromatin, prominent nucleoli, vacuolated cytoplasm, 3‐dimensional cell balls, dark non‐transparent chromatin, central nucleoli, single malignant cells and spindle‐shaped cells). All cytological specimens had surgical biopsy results. Inter‐rater agreement was assessed by Cohen's κ. Association between features and AC was determined using hierarchical logistic regression model where feature scores were nested within reviewers. A model to classify cases as SCC or AC was developed and verified by k‐fold verification ( k ?=?5). Classification performance was assessed using the area under the receiver operating characteristic curve. Results Observed rater agreement for scored features ranged from 49% to 82%. Kappa scores were clustered in three groups. Raters demonstrated good agreement for prominent nucleoli, vesicular chromatin and eccentric nuclei. Fair agreement was seen for 3‐dimensional cell balls, dark non‐transparent chromatin, and presence of spindle‐shaped cells. Association of features with adenocarcinoma showed four statistically significant associations ( P ??0.001) with adenocarcinoma. These features were prominent nucleoli, vesicular chromatin, eccentric nuclei and three‐dimensional cell balls. Spindle‐shaped cells and dark non‐transparent chromatin were negatively associated with adenocarcinoma. Conclusions Logistic regression analysis demonstrated six features helpful in separation of AC from SCC . Prominent nucleoli, vesicular chromatin, cell balls and eccentric nucleoli were positively associated with AC and demonstrated a P value of 0.001 or less. The presence of dark, non‐transparent chromatin and spindle‐shaped cells favoured the diagnosis of SCC .
机译:摘要背景电流疗法需要将非小细胞癌分离成腺癌(AC)和鳞状细胞癌(SCC)。 Meta分析显示出汇集诊断敏感性为63%,特异性为95%,诊断AC。虽然已经提出了许多细胞形态特征来分离来自SCC的ac,但我们不知道对可用于分离这两个癌的细胞骨髓特征的统计学分析。我们对分类SCC和AC进行了可用于分类的细胞学特征进行逻辑回归分析。设计六十一张帕帕内尼糊糊的细针吸附试样(29 AC / 32 SCC)被两杆核心缩写的细胞病变审查了九个特征(偏心核仁,染色质,突出的核仁,真空的细胞质,三维细胞球,黑暗的非 - 翻草剂染色质,中央核仁,单一恶性细胞和梭形细胞)。所有细胞学标本都具有手术活检结果。税率协议是由Cohen的κ评估的。使用分层逻辑回归模型确定功能和AC之间的关联,其中包含特征分数在审阅者内。通过K-FOR验证开发并验证了将案例分类为SCC或AC的模型(K?=?5)。使用接收器操作特性曲线下的区域进行分类性能。结果观察到的评价分配的协议范围为49%至82%。 Kappa评分分为三组。评估者对突出的核仁,果皮染色质和偏心核来表现出良好的一致性。针对三维细胞球,深色非透明染色质和主轴形细胞的存在。具有腺癌的特征结合显示出具有腺癌的四个统计学显着的关联(p≤≤0.001)。这些特征是突出的核仁,斑氮素,偏心核和三维细胞球。纺锤形细胞和暗非透明染色质与腺癌负相关。结论Logistic回归分析展示了六种功能,有助于分离SCC。突出的核仁,凹凸染色质,细胞球和偏心核仁与Ac正面相关,并证明了0.001或更低的P值。黑暗,非透明染色质和梭形细胞的存在赞成SCC的诊断。

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