Literature DB >> 8978873

Potential of the back propagation neural network in the morphologic examination of thyroid lesions.

P Karakitsos1, B Cochand-Priollet, P J Guillausseau, A Pouliakis.   

Abstract

OBJECTIVE: To investigate the potential of back propagation (BP) neural networks (NNs) in the discrimination of benign from malignant thyroid lesions. STUDY
DESIGN: The study was performed on May-Grünwald-Giemsa-stained smears obtained by fine needle aspiration (FNA). Using a custom image analysis system, 26 features that describe the size, shape and texture of the nucleus were measured from each cell. The cases were distributed according to categories, as follows: 25 cases of goiter and follicular adenomas, 1 case of follicular carcinoma, 12 cases of papillary carcinoma, 6 cases of oncocytic adenoma, 3 cases of oncocytic carcinoma and 4 cases of Hashimoto thyroiditis. From each case about 100 nuclei were measured; they formed a pool of 13,850 feature vectors. Out of this pool, 2,770 vectors were randomly selected to form the training set, and the remaining 11,080 vectors formed the test set.
RESULTS: The application of a BP NN on the nuclear measurements permitted correct classification of 90.61% nuclei. Classification at the patient level was performed using a hypothesis test for proportion and two different hypothesis values, one equal to the overall accuracy of the NN and one equal to 50%. The second method permitted correct classification of 98% of patients.
CONCLUSION: These results indicate that the use of NNs combined with image morphometry and statistical techniques may offer useful information on the potential malignancy of thyroid cells and may improve the diagnostic accuracy of FNA of the thyroid gland, especially in cases classified as suspicious for malignancy.

Entities:  

Mesh:

Year:  1996        PMID: 8978873

Source DB:  PubMed          Journal:  Anal Quant Cytol Histol        ISSN: 0884-6812            Impact factor:   0.302


  7 in total

1.  Radial Basis Function Artificial Neural Network for the Investigation of Thyroid Cytological Lesions.

Authors:  Christos Fragopoulos; Abraham Pouliakis; Christos Meristoudis; Emmanouil Mastorakis; Niki Margari; Nicolaos Chroniaris; Nektarios Koufopoulos; Alexander G Delides; Nicolaos Machairas; Vasileia Ntomi; Konstantinos Nastos; Ioannis G Panayiotides; Emmanouil Pikoulis; Evangelos P Misiakos
Journal:  J Thyroid Res       Date:  2020-11-24

2.  Accurate diagnosis of thyroid follicular lesions from nuclear morphology using supervised learning.

Authors:  John A Ozolek; Akif Burak Tosun; Wei Wang; Cheng Chen; Soheil Kolouri; Saurav Basu; Hu Huang; Gustavo K Rohde
Journal:  Med Image Anal       Date:  2014-04-21       Impact factor: 8.545

3.  Time for evidence-based cytology.

Authors:  Pranab Dey
Journal:  Cytojournal       Date:  2007-01-08       Impact factor: 2.091

4.  Carnegie Mellon University bioimaging day 2014: Challenges and opportunities in digital pathology.

Authors:  Gustavo K Rohde; John A Ozolek; Anil V Parwani; Liron Pantanowitz
Journal:  J Pathol Inform       Date:  2014-08-28

5.  Digital image classification with the help of artificial neural network by simple histogram.

Authors:  Pranab Dey; Nirmalya Banerjee; Rajwant Kaur
Journal:  J Cytol       Date:  2016 Apr-Jun       Impact factor: 1.000

Review 6.  Artificial Neural Networks as Decision Support Tools in Cytopathology: Past, Present, and Future.

Authors:  Abraham Pouliakis; Efrossyni Karakitsou; Niki Margari; Panagiotis Bountris; Maria Haritou; John Panayiotides; Dimitrios Koutsouris; Petros Karakitsos
Journal:  Biomed Eng Comput Biol       Date:  2016-02-18

Review 7.  Digital Medicine in Thyroidology: A New Era of Managing Thyroid Disease.

Authors:  Jae Hoon Moon; Steven R Steinhubl
Journal:  Endocrinol Metab (Seoul)       Date:  2019-06
  7 in total

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