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A hybrid machine learning-based method for classifying the Cushing's Syndrome with comorbid adrenocortical lesions

BACKGROUND: The prognosis for many cancers could be improved dramatically if they could be detected while still at the microscopic disease stage. It follows from a comprehensive statistical analysis that a number of antigens such as hTERT, PCNA and Ki-67 can be considered as cancer markers, while an...

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Autores principales: Yang, Jack Y, Yang, Mary Qu, Luo, Zuojie, Ma, Yan, Li, Jianling, Deng, Youping, Huang, Xudong
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2008
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2386065/
https://www.ncbi.nlm.nih.gov/pubmed/18366613
http://dx.doi.org/10.1186/1471-2164-9-S1-S23
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author Yang, Jack Y
Yang, Mary Qu
Luo, Zuojie
Ma, Yan
Li, Jianling
Deng, Youping
Huang, Xudong
author_facet Yang, Jack Y
Yang, Mary Qu
Luo, Zuojie
Ma, Yan
Li, Jianling
Deng, Youping
Huang, Xudong
author_sort Yang, Jack Y
collection PubMed
description BACKGROUND: The prognosis for many cancers could be improved dramatically if they could be detected while still at the microscopic disease stage. It follows from a comprehensive statistical analysis that a number of antigens such as hTERT, PCNA and Ki-67 can be considered as cancer markers, while another set of antigens such as P27KIP1 and FHIT are possible markers for normal tissue. Because more than one marker must be considered to obtain a classification of cancer or no cancer, and if cancer, to classify it as malignant, borderline, or benign, we must develop an intelligent decision system that can fullfill such an unmet medical need. RESULTS: We have developed an intelligent decision system using machine learning techniques and markers to characterize tissue as cancerous, non-cancerous or borderline. The system incorporates learning techniques such as variants of support vector machines, neural networks, decision trees, self-organizing feature maps (SOFM) and recursive maximum contrast trees (RMCT). These variants and algorithms we have developed, tend to detect microscopic pathological changes based on features derived from gene expression levels and metabolic profiles. We have also used immunohistochemistry techniques to measure the gene expression profiles from a number of antigens such as cyclin E, P27KIP1, FHIT, Ki-67, PCNA, Bax, Bcl-2, P53, Fas, FasL and hTERT in several particular types of neuroendocrine tumors such as pheochromocytomas, paragangliomas, and the adrenocortical carcinomas (ACC), adenomas (ACA), and hyperplasia (ACH) involved with Cushing's syndrome. We provided statistical evidence that higher expression levels of hTERT, PCNA and Ki-67 etc. are associated with a higher risk that the tumors are malignant or borderline as opposed to benign. We also investigated whether higher expression levels of P27KIP1 and FHIT, etc., are associated with a decreased risk of adrenomedullary tumors. While no significant difference was found between cell-arrest antigens such as P27KIP1 for malignant, borderline, and benign tumors, there was a significant difference between expression levels of such antigens in normal adrenal medulla samples and in adrenomedullary tumors. CONCLUSIONS: Our frame work focused on not only different classification schemes and feature selection algorithms, but also ensemble methods such as boosting and bagging in an effort to improve upon the accuracy of the individual classifiers. It is evident that when all sorts of machine learning and statistically learning techniques are combined appropriately into one integrated intelligent medical decision system, the prediction power can be enhanced significantly. This research has many potential applications; it might provide an alternative diagnostic tool and a better understanding of the mechanisms involved in malignant transformation as well as information that is useful for treatment planning and cancer prevention.
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spelling pubmed-23860652008-05-15 A hybrid machine learning-based method for classifying the Cushing's Syndrome with comorbid adrenocortical lesions Yang, Jack Y Yang, Mary Qu Luo, Zuojie Ma, Yan Li, Jianling Deng, Youping Huang, Xudong BMC Genomics Research BACKGROUND: The prognosis for many cancers could be improved dramatically if they could be detected while still at the microscopic disease stage. It follows from a comprehensive statistical analysis that a number of antigens such as hTERT, PCNA and Ki-67 can be considered as cancer markers, while another set of antigens such as P27KIP1 and FHIT are possible markers for normal tissue. Because more than one marker must be considered to obtain a classification of cancer or no cancer, and if cancer, to classify it as malignant, borderline, or benign, we must develop an intelligent decision system that can fullfill such an unmet medical need. RESULTS: We have developed an intelligent decision system using machine learning techniques and markers to characterize tissue as cancerous, non-cancerous or borderline. The system incorporates learning techniques such as variants of support vector machines, neural networks, decision trees, self-organizing feature maps (SOFM) and recursive maximum contrast trees (RMCT). These variants and algorithms we have developed, tend to detect microscopic pathological changes based on features derived from gene expression levels and metabolic profiles. We have also used immunohistochemistry techniques to measure the gene expression profiles from a number of antigens such as cyclin E, P27KIP1, FHIT, Ki-67, PCNA, Bax, Bcl-2, P53, Fas, FasL and hTERT in several particular types of neuroendocrine tumors such as pheochromocytomas, paragangliomas, and the adrenocortical carcinomas (ACC), adenomas (ACA), and hyperplasia (ACH) involved with Cushing's syndrome. We provided statistical evidence that higher expression levels of hTERT, PCNA and Ki-67 etc. are associated with a higher risk that the tumors are malignant or borderline as opposed to benign. We also investigated whether higher expression levels of P27KIP1 and FHIT, etc., are associated with a decreased risk of adrenomedullary tumors. While no significant difference was found between cell-arrest antigens such as P27KIP1 for malignant, borderline, and benign tumors, there was a significant difference between expression levels of such antigens in normal adrenal medulla samples and in adrenomedullary tumors. CONCLUSIONS: Our frame work focused on not only different classification schemes and feature selection algorithms, but also ensemble methods such as boosting and bagging in an effort to improve upon the accuracy of the individual classifiers. It is evident that when all sorts of machine learning and statistically learning techniques are combined appropriately into one integrated intelligent medical decision system, the prediction power can be enhanced significantly. This research has many potential applications; it might provide an alternative diagnostic tool and a better understanding of the mechanisms involved in malignant transformation as well as information that is useful for treatment planning and cancer prevention. BioMed Central 2008-03-20 /pmc/articles/PMC2386065/ /pubmed/18366613 http://dx.doi.org/10.1186/1471-2164-9-S1-S23 Text en Copyright © 2008 Yang et al.; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an open access article distributed under the terms of the Creative Commons Attribution License ( (http://creativecommons.org/licenses/by/2.0) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Yang, Jack Y
Yang, Mary Qu
Luo, Zuojie
Ma, Yan
Li, Jianling
Deng, Youping
Huang, Xudong
A hybrid machine learning-based method for classifying the Cushing's Syndrome with comorbid adrenocortical lesions
title A hybrid machine learning-based method for classifying the Cushing's Syndrome with comorbid adrenocortical lesions
title_full A hybrid machine learning-based method for classifying the Cushing's Syndrome with comorbid adrenocortical lesions
title_fullStr A hybrid machine learning-based method for classifying the Cushing's Syndrome with comorbid adrenocortical lesions
title_full_unstemmed A hybrid machine learning-based method for classifying the Cushing's Syndrome with comorbid adrenocortical lesions
title_short A hybrid machine learning-based method for classifying the Cushing's Syndrome with comorbid adrenocortical lesions
title_sort hybrid machine learning-based method for classifying the cushing's syndrome with comorbid adrenocortical lesions
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2386065/
https://www.ncbi.nlm.nih.gov/pubmed/18366613
http://dx.doi.org/10.1186/1471-2164-9-S1-S23
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