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MRI Texture Analysis Reflects Histopathology Parameters in Thyroid Cancer – A First Preliminary Study

OBJECT: Thyroid cancer represents the most frequent malignancy of the endocrine system with an increasing incidence worldwide. Novel imaging techniques are able to further characterize tumors and even predict histopathology features. Texture analysis is an emergent imaging technique to extract exten...

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Autores principales: Meyer, Hans-Jonas, Schob, Stefan, Höhn, Anne Kathrin, Surov, Alexey
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Neoplasia Press 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5645305/
https://www.ncbi.nlm.nih.gov/pubmed/28987630
http://dx.doi.org/10.1016/j.tranon.2017.09.003
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author Meyer, Hans-Jonas
Schob, Stefan
Höhn, Anne Kathrin
Surov, Alexey
author_facet Meyer, Hans-Jonas
Schob, Stefan
Höhn, Anne Kathrin
Surov, Alexey
author_sort Meyer, Hans-Jonas
collection PubMed
description OBJECT: Thyroid cancer represents the most frequent malignancy of the endocrine system with an increasing incidence worldwide. Novel imaging techniques are able to further characterize tumors and even predict histopathology features. Texture analysis is an emergent imaging technique to extract extensive data from an radiology images. The present study was therefore conducted to identify possible associations between texture analysis and histopathology parameters in thyroid cancer. METHODS: The radiological database was retrospectively reviewed for thyroid carcinoma. Overall, 13 patients (3 females, 23.1%) with a mean age of 61.6 years were identified. The MaZda program was used for texture analysis. The T1-precontrast and T2-weighted images were analyzed and overall 279 texture feature for each sequence was investigated. For every patient cell count, Ki67-index and p53 count were investigated. RESULTS: Several significant correlations between texture features and histopathology were identified. Regarding T1-weighted images, S(0;1)Sum Averg correlated the most with cell count (r = 0.82). An inverse correlations with S(5;0)AngScMom, S(5;0)DifVarnc S(5;0), DiffEntrp and GrNonZeros (r = −0.69, −0.66, −0.69 and −0.63, respectively) was also identified. For T2-weighted images, Variance with r = 0.63 was the highest coefficient, WavEnLL_S3 correlated inversely with cell count (r = −0.57). WavEnLL_S2 derived from T1-weighted images was the highest coefficient r = −0.80, S(0;5)SumVarnc was positively with r = 0.74. Regarding T2-weighted images WavEnHL_s-1 was inverse correlated with Ki67 index (r = −0.77). S(1;0)Correlat was with r = 0.75 the best correlation with Ki67 index. For T1-weighed images S(5;0)SumofSqs was the best with r = 0.65 with p53 count. For T2-weighted images S(1;−1)SumEntrp was the inverse correlation with r = −0.72, whereas S(0;4)AngScMom correlated positively with r = 0.63. CONCLUSIONS: MRI texture analysis derived from conventional sequences reflects histopathology features in thyroid cancer. This technique might be a novel noninvasive modality to further characterize thyroid cancer in clinical oncology.
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spelling pubmed-56453052017-10-23 MRI Texture Analysis Reflects Histopathology Parameters in Thyroid Cancer – A First Preliminary Study Meyer, Hans-Jonas Schob, Stefan Höhn, Anne Kathrin Surov, Alexey Transl Oncol Original article OBJECT: Thyroid cancer represents the most frequent malignancy of the endocrine system with an increasing incidence worldwide. Novel imaging techniques are able to further characterize tumors and even predict histopathology features. Texture analysis is an emergent imaging technique to extract extensive data from an radiology images. The present study was therefore conducted to identify possible associations between texture analysis and histopathology parameters in thyroid cancer. METHODS: The radiological database was retrospectively reviewed for thyroid carcinoma. Overall, 13 patients (3 females, 23.1%) with a mean age of 61.6 years were identified. The MaZda program was used for texture analysis. The T1-precontrast and T2-weighted images were analyzed and overall 279 texture feature for each sequence was investigated. For every patient cell count, Ki67-index and p53 count were investigated. RESULTS: Several significant correlations between texture features and histopathology were identified. Regarding T1-weighted images, S(0;1)Sum Averg correlated the most with cell count (r = 0.82). An inverse correlations with S(5;0)AngScMom, S(5;0)DifVarnc S(5;0), DiffEntrp and GrNonZeros (r = −0.69, −0.66, −0.69 and −0.63, respectively) was also identified. For T2-weighted images, Variance with r = 0.63 was the highest coefficient, WavEnLL_S3 correlated inversely with cell count (r = −0.57). WavEnLL_S2 derived from T1-weighted images was the highest coefficient r = −0.80, S(0;5)SumVarnc was positively with r = 0.74. Regarding T2-weighted images WavEnHL_s-1 was inverse correlated with Ki67 index (r = −0.77). S(1;0)Correlat was with r = 0.75 the best correlation with Ki67 index. For T1-weighed images S(5;0)SumofSqs was the best with r = 0.65 with p53 count. For T2-weighted images S(1;−1)SumEntrp was the inverse correlation with r = −0.72, whereas S(0;4)AngScMom correlated positively with r = 0.63. CONCLUSIONS: MRI texture analysis derived from conventional sequences reflects histopathology features in thyroid cancer. This technique might be a novel noninvasive modality to further characterize thyroid cancer in clinical oncology. Neoplasia Press 2017-10-06 /pmc/articles/PMC5645305/ /pubmed/28987630 http://dx.doi.org/10.1016/j.tranon.2017.09.003 Text en © 2017 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original article
Meyer, Hans-Jonas
Schob, Stefan
Höhn, Anne Kathrin
Surov, Alexey
MRI Texture Analysis Reflects Histopathology Parameters in Thyroid Cancer – A First Preliminary Study
title MRI Texture Analysis Reflects Histopathology Parameters in Thyroid Cancer – A First Preliminary Study
title_full MRI Texture Analysis Reflects Histopathology Parameters in Thyroid Cancer – A First Preliminary Study
title_fullStr MRI Texture Analysis Reflects Histopathology Parameters in Thyroid Cancer – A First Preliminary Study
title_full_unstemmed MRI Texture Analysis Reflects Histopathology Parameters in Thyroid Cancer – A First Preliminary Study
title_short MRI Texture Analysis Reflects Histopathology Parameters in Thyroid Cancer – A First Preliminary Study
title_sort mri texture analysis reflects histopathology parameters in thyroid cancer – a first preliminary study
topic Original article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5645305/
https://www.ncbi.nlm.nih.gov/pubmed/28987630
http://dx.doi.org/10.1016/j.tranon.2017.09.003
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