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Using electron microscopy and multivariate cluster analysis to determine diagnosis and prognosis in cases of neuroendocrine lung carcinoma

Diagnóstico e prognóstico dos tumores pulmonares neuroendócrinos mediante microscopia eletrônica e análise multivariavel de agrupamento

Cecília Aparecida Vaiano Farhat, Edwin Roger Parra, Andrew V. Rogers, Silvia Nagib Elian, Mary N. Sheppard, Vera Luiza Capelozzi

ABSTRACT

Objective: To establish reproducible electron microscopic criteria for identifying the four major types of neuroendocrine tumors of the lung: carcinoid; atypical carcinoid; large cell neuroendocrine carcinoma; and small cell carcinoma. Methods: Measurements were made on electron micrographs using a digital image analyzer. Sixteen morphometric variables related to tumor cell differentiation were assessed in 27 tumors. The examination under electron microscopy revealed that all of the tumors could be classified as belonging to one of the four categories listed above. Cluster analysis of the morphometry variables was used to group the tumors into three clusters, and Kaplan-Meier survival function curves were employed in order to draw correlations between each cluster and survival. Results: All three clusters of neuroendocrine carcinomas were found to be associated with survival curves, demonstrating the prognostic significance of electron microscopic features. The tumors fell into three well-defined clusters, which represent the spectrum of neuroendocrine differentiation: typical carcinoid (cluster 1); atypical carcinoid and large cell neuroendocrine carcinoma (cluster 2); and small cell carcinoma (cluster 3). Cluster 2 represents an intermediate step in neuroendocrine carcinogenesis, between typical carcinoid tumors and small cell carcinomas. Conclusions: Our findings confirm that electron microscopy is useful in making the diagnosis and prognosis in cases of lung tumor.

Keywords: Neuroendocrine tumors/lung; Microscopy, electron; Cluster analysis; Survival analysis.

RESUMO

Objetivo: Estabelecer, com ajuda do microscópio eletrônico, critérios que possibilitem uma diferenciação mais exata entre os quatro tipos maiores de tumores neuroendócrinos pulmonares: tumor carcinóide típico e atípico, carcinoma de grandes células neuroendócrino e carcinoma de pequenas células. Métodos: Todos os tumores foram avaliados morfometricamente e 16 variáveis foram relacionadas com diferenciação das células tumorais; estas variáveis foram analisadas sob microscopia eletrônica com ajuda de um analisador de imagem digital em 27 tumores. A avaliação através da microscopia eletrônica revelou que todos os tumors investigados podiam ser classificados a um dos quarto tipos listados acima. A análise das variáveis morfométricas foi usada para agrupar os tumores em três grandes grupos, os quais foram relacionados à sobrevivência pelas curvas de Kaplan Meier. Resultados: Os três grupos de carcinoma neuroendócrino associaram-se às curvas da sobrevivência, as quais mostraram características ultra-estruturais na microscopia eletrônica de significância prognóstica distinta. Os tumores foram contidos em três grupos bem definidos, que representam o espectro da diferenciação neuroendócrina: tumor carcinóide (grupo 1); tumor carcinóide atípico e carcinoma de grandes células neuroendócrino (grupo 2); e carcinoma de pequenas células (grupo 3). O grupo 2 representa um espectro intermediário na carcinogênese neuroendócrina, entre o carcinóide típico e o carcinoma de pequenas células. Conclusões: Nossos achados confirmam que a microscopia eletrônica é uma ferramenta útil no diagnóstico e prognóstico dos casos de tumores pulmonares.

Palavras-chave: Tumores neuroendócrinos/pulmão; Microscopia eletrônica; Análise por aglomerados; Análise de sobrevida.

Introduction

Neuroendocrine tumors of the lung can be regarded as a distinct subset of tumors since they share certain morphological, ultrastructural, ­immunohistochemical and molecular characteristics.(1-9) Their classification is very important, not only because it provides the basis for patient treatment, but also because it provides a cornerstone for comparison of epidemiologic and biological studies, which are useful for understanding etiology.(10-13)
According to the World Health Organization (WHO) classification,(14) the major categories of neuroendocrine tumors include small cell carcinoma, large cell neuroendocrine carcinoma (LCNEC), typical carcinoid and atypical carcinoid.
The WHO(14) classification is based on light microscopy. However, in practice, the differentiation among these tumors is typically made on the basis of electron microscopy findings, specifically the quantification and qualification of dense-core granules.(15-19)

We decided to carry out an ultrastructural study of the four types of neuroendocrine lung carcinomas, using morphometry and multivariate cluster analysis to determine whether light microscopy findings correlate with electron microscopy findings in the classification of these tumors. If established, this would allow us to gain better insight into the morphological spectrum of neuroendocrine carcinomas.

Methods

Specimens were obtained by retrospective review of the medical and pathological records of 27 primary lung tumors with neuroendocrine features treated surgically between 1984 and 1992 at the Royal Brompton Hospital in London, England. The tissue available for study had been fixed in 10% buffered formalin, embedded in paraffin, sectioned and stained with hematoxylin-eosin.
Ultrastructural studies were performed in all tumors. At the time of resection, random samples of tumor were diced, fixed in 2.5% buffered glutaraldehyde, embedded in Araldite and cut into thin sections that were then stained with uranyl acetate and lead citrate. Prior to the morphometric study, light microscopy was used to diagnose the degree of neoplastic differentiation according to the 2004 WHO criteria.(14) A total of 27 tumors were selected for morphometry: 7 typical carcinoid tumors; 5 atypical carcinoid tumors; 8 LCNECs; and 7 small cell lung carcinomas (SCLCs). From each tumor, electron micrographs of complete cell profiles were obtained in a random fashion at either ×2,500 or ×3,400. The photographs were digitized, after which cells, cell nuclei and granules were analyzed using the public domain software NIH Image on an Apple Macintosh computer. For each tumor type, approximately 50 cells were sampled.

The data were submitted to a 16-variable cluster analysis in order to determine, in a reproducible way, whether neuroendocrine tumors are classifiable from a statistical viewpoint, and if they are, how so. In this study, because of the differences in the mean and variance among the variables, we defined the distance between i th and j th elements in a standardized form as follows:

D (i, j ) = [(x1i − x1j )2 / s21 + (x2i − x2j )2 / s22 + . . . + (x16i − x16j )2 / s216j ]1/2

where S21, S22 . . . S216 are the estimated variances for X1, X2 . . . X16, respectively. The distances between pairs of clusters or between an individual and a cluster were determined using the Ward hierarchical linkage method.(20) In the Ward method, clustering is carried out with the objective of minimizing the sum of square deviation (S ) within a cluster, as described in the following equation:

S = ∑mj = 1 ∑ni = 1(xji − ×j )2

where × is the mean, m is the number of variables, n is the number of individuals in the cluster, xji is the measurement of the j th variable in the i th individual, ×j is the mean of the j th variable. If we calculate ∆Spq, the increase in S when two clusters (p and q) are fused is as follows:

ΔSpq = Sp+q − Sp − Sq = ∑mj = 1{∑nj = 1(xji(p+q) − ×j-(p+q))2 - ∑npi = 1(xji(p)- ×j-(p))2 − ∑nqi = 1(xji(q) − ×j-(q))2}

where ×j-(p+q), ×j-(p) and ×j-(q) are the mean values of the j th variable in clusters p + q, p and q, respectively. The above expression can be simplified as follows:

ΔSpq = npnq / (np + nq) ∑mj = 1(xj-(p) − ×j-(q))2 = npnq / (np + nq) D 2(p,q)

Thus, in the Ward method, a cluster is formed so as to group pairs of individuals or clusters having the minimum value of ∆S.

To evaluate the classification obtained through the hierarchical cluster analysis, a survival analysis was performed. For each cluster, we estimated the survival function S (t ) = P (an individual survives longer than t ). The Kaplan-Meier product-limit method,(21-23) which is appropriate for estimating survival functions in small samples with censored observations, was employed. This method does not require any assumptions about the form of the function that is being estimated.

All analyses were performed using Statistical Package for the Social Sciences (SPSS Inc., Chicago, IL, USA).(24) The threshold for statistical significance was set at α = 5%.

Results

Ultrastructurally, in the typical carcinoid tumors, the nuclei showed chromatin condensation at the periphery, near the nuclear membrane. There were characteristically abundant, dense, membrane-bound granules, with considerable heterogeneity in size and configuration within the cell cytoplasm (Figures 1a and 1c). In the atypical carcinoid tumors, the nuclei were regularly contoured and showed some peripheral chromatin condensation; prominent nucleoli were rare. The cytoplasm was abundant with cytoplasmic processes.
There were moderate numbers of dense-core granules, which were diffusely distributed throughout the cytoplasm, with a tendency to concentrate in the cytoplasmic processes. The granules were heterogeneous in size, shape and electron-density (Figures 2a and 2c). In the LCNECs, the nuclear chromatin tended to be coarsely electron-dense, and the nucleoli were quite prominent. Small numbers of dense-core granules, varying greatly in shape and size, were noted within the cytoplasm or in the cytoplasmic processes (Figures 2b and 2d). In the SCLCs, there was a high nucleus/cytoplasm ratio, with little cytoplasm, the nucleus showed finely granular chromatin, and there were no prominent nucleoli (Figures 1b and 1d). Dense-core granules were few in number and located primarily in cell processes.





After morphometry, the features of the cells were represented by 16 variables, as listed in Table 1.

Figure 3 is a dendrogram obtained for the 16 variables using cluster analysis. The 27 tumors were grouped into three clusters: cluster 1, composed exclusively of typical carcinoid tumors (n = 7); cluster 2, composed of atypical carcinoid tumors and LCNECs (n = 13); and cluster 3, composed exclusively of SCLCs (n = 7). Clusters 1 and 3 presented a deep cleavage with cluster 2, and the difference was highly significant. Clusters 1 and 3 were quite coherent, whereas cluster 2 exhibited subclusters. Cluster 2 presented close overlapping of the atypical carcinoid tumors and LCNECs. We therefore have an electron microscopy finding spectrum ranging from pure typical carcinoid tumor to pure SCLC, whereas the atypical carcinoid tumors and LCNECs diagnosed under light microscopy fall into the overlapping cluster (cluster 2).



In Table 1, the descriptive values (mean and variance [V]) are presented for each cluster. In cluster 3, the cell area (CA) and nuclear area (NA) were smaller (mean CA = 72.18, VCA = 272.91; mean NA= 24.38, V NA = 83.54), the mean nuclear length (NL) was 8.30 (VNL = 0.81), and there were few granules, the mean granule area (GA) being 9805 (VGA = 1.5 E+7). The granules were distributed primarily in the cytoplasmic processes, which is characteristic of small cell carcinoma. In cluster 2, there was a combination of large cells and pleomorphic cells (mean CA = 243.50, VCA = 2601; mean cell length [CL] = 24.62, VCL = 83.90) with irregularly elongated nuclei and pleomorphic nuclei (mean NA = 49.66, VNA = 340.77), containing large granules and pleomorphic granules (mean GA=23622, V GA =1.8 E+8), which are characteristic of atypical carcinoid tumors and large cell carcinomas. Cluster 1 showed smaller nuclei than did cluster 2, with more cytoplasm than in cluster 3 but less than in cluster 2. Cluster 1 also had more granules than did either of the other two clusters, which is characteristic of typical carcinoid tumors.



Special attention is given to the parameter values of the atypical carcinoid tumors and LCNECs in cluster 2, which exhibited two subclusters (Figure 3): subcluster A, on the left, comprising 3 atypical carcinoid tumors and 2 LCNECs, with pleomorphic cells that were larger and more elongated (mean CA = 271.5, VCA = 5227.3) than those observed in subcluster B, which comprised 2 atypical carcinoid tumors and 6 LCNECs (mean CA = 226.01, VCA = 559, 19) and in which the pleomorphic nuclei were larger and more irregular (mean NA = 53.55, VNA = 491.06).

The validity and reproducibility of the results were determined in the following way. Initially, data related to the 16 variables for the 27 lesions were subjected to principal component analysis(21) creating the 1st, 2nd . . . 6th principal components y1, y2 . . . y6. We found that, even if only the 1st through the 6th components were taken into consideration and the others were omitted, more than 92% of the total variations in the data would be saved.

Since the coefficients of the components y1, y2, y3, y4, y5, and y6 were, respectively, (0.8050; 0.8240; 0.9610; 0.8070), (0.6970; 0.6930; 0.7090), (0.7630), (−0.6060; 0.7020), (−0.4930; 0.4890; 0.4800) and (−0.5280; 0.4450), they can be viewed as follows:

 y1 (the first component) coincides with the variables CA + NA + granules/cytoplasm (GCy) + nuclear width (NW), referred to, collectively, as cell size factor

 y2 (the second component) coincides with the variables nuclear width/length ratio (NR) + granule axis (GAx) + granule diameter (GD), referred to, collectively, as nucleus and granule size factor

 y3 (the third component) coincides with granules/cell (GC), referred to as granule density factor

 y4 (the fourth component) coincides with the variables granule area (GA) + (CL), referred to, together, as granule by cell length size factor

 y5 (the fifth component) coincides with the variables cell width/length ratio (CR) + cytoplasm/nucleus ratio (CyR) + cell width (CW) + NR + GAx + GD, referred to, collectively, as nucleus by cytoplasm ratio factor

 y6 (the sixth component) coincides with the variables GA + total granules (TG), referred to, together, as cell by granule ratio factor

In the 16-dimensional cluster analysis, one cannot visualize how the individual lesions are distributed in 16-dimensional space. Therefore, we introduce the canonical discriminant analysis (the Fisher discriminant analysis)(21) to visualize to what degree the lesions overlap or form separate groups. This analysis also creates a set of linear discriminant equations from the given set of data so as to maximize the difference between clusters. Thus, linear discriminant formulae d1, d2, and d3, respectively, are each expressed as a linear formula including the principal components y1, y2 . . . y6:

 d1 = −10.185 − 5.68 y1 + 5.30 y2 + 8.55 y3 − 1.17 y4 + 2.16 y5 + 0.0055 y6

 d2 = −5.331 + 7.77 y1 − 2.27 y2 − 2.06 y3 + 0.52 y4 + 2.41 y5 − 1.04 y6

 d3 = −10.462 − 8.75 y1 − 1.08 y2 − 4.71 y3 + 0.21 y4 − 6.64 y5 + 1.92 y6

Of the canonical variables obtained, the 1st and 2nd variables, d1 and d2, were calculated for each individual. These allow one to visualize in a two-dimensional d1, d2 scattergram to what degree the individuals are separated within a given cluster. Using these variables, a second discrimination test was performed for each of the 27 lesions.

The estimated survival curves are plotted in Figure 4. The median survival of patients with tumors belonging to cluster 2 was 48 months, which was much worse than that of those with tumors belonging to cluster 1 but better than that of those with tumors belonging to cluster 3. The log rank test provided strong evidence of a difference between the survival curves (p = 0.0001). Multiple comparisons for the curves revealed significant differences among each pair of groups. Patients with SCLCs presented the shortest estimated survival, and those with typical carcinoid tumors presented the longest.

Discussion

Neuroendocrine tumors of the lung encompass a spectrum from low-grade (typical carcinoid tumors) to intermediate-grade (atypical carcinoid tumors) and high-grade (LCNECs and SCLCs). It was only recently that LCNEC was recognized as the fourth category of neuroendocrine tumors of the lung. In the present study, examination of 27 neuroendocrine lung tumors under light microscopy resulted in their subclassification into these four major groups, which have been shown to have prognostic significance. The incidence of neuroendocrine tumors throughout the body is on the rise.(25) There is controversy as to whether examination under light microscopy is the best means of distinguishing among the different types of neuroendocrine lung tumors, especially between LCNECs and SCLCs, as well as between LCNECs and undifferentiated carcinomas.(26)

We applied techniques of morphometry and multivariate analysis to 16 electron microscopic parameters in the 27 neuroendocrine lung tumors evaluated, which resulted in the formation of three clusters, each with prognostic significance. This expands upon the work we have done previously using light microscopy and confirms that electron microscopic features are of prognostic significance in neuroendocrine lung tumors. We have previously shown the usefulness of electron microscopy in the diagnosis of LCNECs and SCLCs.(4,15-19) In the present study, the tumors fell into three well-defined clusters that represent a spectrum of neuroendocrine differentiation within lung tumors as analyzed using electron microscopy. Cluster 2 presented a mixture of atypical carcinoid tumors and LCNECs, thus representing an intermediate range between typical carcinoid tumors and SCLCs. The electron microscopy findings indicate that nuclear, cytoplasmic and granule features can clearly differentiate between typical carcinoid tumors and SCLCs but cannot differentiate between atypical carcinoid tumors and LCNECs in which there is overlapping of nuclear, cytoplasmic and granule features at the electron microscopic level. Nuclear features and mitoses seen at the light microscopic level remain the most important criteria in distinguishing among these four tumor types.(27)

Our findings confirm that electron microscopy is useful in the classification of lung tumors, as has been shown previously.(28) Our results also confirm the morphological spectrum, at the light and electron microscopic levels, within neuroendocrine tumors of the lung. We have demonstrated that using electron microscopy can have major prognostic significance. In the present study, electron microscopy identified an overlap between atypical carcinoid tumors and LCNECs, which mirrors the overlap found under light microscopy.(29) The clinical characteristics and optimal treatments for patients with LCNECs or atypical carcinoid tumors have yet to be well defined. The prognosis of LCNECs is believed to be poorer than is that of other non-small cell lung cancers.(30)

Further studies are needed in order to look more closely into the overlap between atypical carcinoid tumors and LCNECs, and further collaborative accumulation of clinicopathological data is required.

Acknowledgments

The authors are grateful to the staff of the University of São Paulo School of Medicine Scientific Documentation Service, as well as to the staff of the Department of Histopathology, Royal Brompton Hospital, for their assistance in conducting this study.

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Study carried out at the University of São Paulo School of Medicine, São Paulo, Brazil.
1. Professor at the Pontifical Catholic University of São Paulo, São Paulo, Brazil.
2. Postdoctoral student at the University of São Paulo School of Medicine, São Paulo, Brazil.
3. Professor in the Histopathology Department of the Royal Brompton Hospital, London, UK.
4. Professor of Mathematics and Statistics at the University of São Paulo, São Paulo, Brazil.
5. Associate Professor in the Pathology Department of the University of São Paulo School of Medicine, São Paulo, Brazil.
Correspondence to: Vera Luiza Capelozzi or Edwin Roger Parra. Departamento de Patologia Faculdade de Medicina da USP, Av. Dr. Arnaldo 455, Sala 1143,
CEP 01246-903, São Paulo, SP, Brasil.
Tel 55 11 3061-7427. Fax 55 11 3064-2744. E-mail: vcapelozzi@lim05.fm.usp.br/erparra20003@yahoo.com.br
Financial support: This study received financial support from the following Brazilian agencies: the Conselho Nacional de Desenvolvimento Científico e Tecnológico (CNPq, National Council for Scientific and Technological Development; grant no. 300430/95-7); the Fundação de Amparo à Pesquisa do Estado de São Paulo (FAPESP, Foundation for the Support of Research in the State of São Paulo; grant no. 2000/14336-0); Coordenação de Aperfeiçoamento de Pessoal de Nível Superior (CAPES, Coordination of the Advancement of Higher Education); and the Laboratórios de Investigação Médica (LIM, Laboratories for Medical Research) of the University of São Paulo School of Medicine Hospital das Clínicas.
Submitted 14 November 2007. Accepted, after review, 30 January 2008.
**A versão completa em português deste artigo está disponível em www.jornaldepneumologia.com.br

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