Indeterminate thyroid cytology: detecting malignancy using analysis of nuclear images

Author:

Hayashi Caroline Y1,Jaune Danilo T A1,Oliveira Cristiano C2,Coelho Bárbara P3,Miot Hélio A4,Marques Mariângela E A2,Tagliarini José Vicente5,Castilho Emanuel C5,Soares Carlos S P5,Oliveira Flávia R K1,Soares Paula678,Mazeto Gláucia M F S1

Affiliation:

1. 1Department of Internal Medicine, Botucatu Medical School, Sao Paulo State University (Unesp), Botucatu, São Paulo, Brazil

2. 2Department of Pathology, Botucatu Medical School, Sao Paulo State University (Unesp), Botucatu, São Paulo, Brazil

3. 3Department of Surgery and Orthopedics, Botucatu Medical School, Sao Paulo State University (Unesp), Botucatu, São Paulo, Brazil

4. 4Department of Dermatology, Botucatu Medical School, Sao Paulo State University (Unesp), Botucatu, São Paulo, Brazil

5. 5Department of Otolaryngology and Head and Neck Surgery, Botucatu Medical School, Sao Paulo State University (Unesp), Botucatu, São Paulo, Brazil

6. 6Instituto de Investigação e Inovação em Saúde (i3S), Universidade do Porto, Porto, Portugal

7. 7Cancer Signaling and Metabolism Group, Institute of Molecular Pathology and Immunology of the University of Porto (IPATIMUP), Porto, Portugal

8. 8Department of Pathology, Medical Faculty of the University of Porto, Porto, Portugal

Abstract

Background Thyroid nodules diagnosed as 'atypia of undetermined significance/follicular lesion of undetermined significance' (AUS/FLUS) or 'follicular neoplasm/suspected follicular neoplasm' (FN/SFN), according to Bethesda’s classification, represent a challenge in clinical practice. Computerized analysis of nuclear images (CANI) could be a useful tool for these cases. Our aim was to evaluate the ability of CANI to correctly classify AUS/FLUS and FN/SFN thyroid nodules for malignancy. Methods We studied 101 nodules cytologically classified as AUS/FLUS (n = 68) or FN/SFN (n = 33) from 97 thyroidectomy patients. Slides with cytological material were submitted for manual selection and analysis of the follicular cell nuclei for morphometric and texture parameters using ImageJ software. The histologically benign and malignant lesions were compared for such parameters which were then evaluated for the capacity to predict malignancy using the classification and regression trees gini model. The intraclass coefficient of correlation was used to evaluate method reproducibility. Results In AUS/FLUS nodule analysis, the benign and malignant nodules differed for entropy (P < 0.05), while the FN/SFN nodules differed for fractal analysis, coefficient of variation (CV) of roughness, and CV-entropy (P < 0.05). Considering the AUS/FLUS and FN/SFN nodules separately, it correctly classified 90.0 and 100.0% malignant nodules, with a correct global classification of 94.1 and 97%, respectively. We observed that reproducibility was substantially or nearly complete (0.61–0.93) in 10 of the 12 nuclear parameters evaluated. Conclusion CANI demonstrated a high capacity for correctly classifying AUS/FLUS and FN/SFN thyroid nodules for malignancy. This could be a useful method to help increase diagnostic accuracy in the indeterminate thyroid cytology.

Publisher

Bioscientifica

Subject

Endocrinology,Endocrinology, Diabetes and Metabolism,Internal Medicine

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