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A machine-learning algorithm for distinguishing malignant from benign indeterminate thyroid nodules using ultrasound radiomic features

Publication ,  Journal Article
Keutgen, XM; Li, H; Memeh, K; Conn Busch, J; Williams, J; Lan, L; Sarne, D; Finnerty, B; Angelos, P; Fahey, TJ; Giger, ML
Published in: Journal of Medical Imaging
May 1, 2022

Background: Ultrasound (US)-guided fine needle aspiration (FNA) cytology is the gold standard for the evaluation of thyroid nodules. However, up to 30% of FNA results are indeterminate, requiring further testing. In this study, we present a machine-learning analysis of indeterminate thyroid nodules on ultrasound with the aim to improve cancer diagnosis. Methods: Ultrasound images were collected from two institutions and labeled according to their FNA (F) and surgical pathology (S) diagnoses [malignant (M), benign (B), and indeterminate (I)]. Subgroup breakdown (FS) included: 90 BB, 83 IB, 70 MM, and 59 IM thyroid nodules. Margins of thyroid nodules were manually annotated, and computerized radiomic texture analysis was conducted within tumor contours. Initial investigation was conducted using five-fold cross-validation paradigm with a two-class Bayesian artificial neural networks classifier, including stepwise feature selection. Testing was conducted on an independent set and compared with a commercial molecular testing platform. Performance was evaluated using receiver operating characteristic analysis in the task of distinguishing between malignant and benign nodules. Results: About 1052 ultrasound images from 302 thyroid nodules were used for radiomic feature extraction and analysis. On the training/validation set comprising 263 nodules, five-fold cross-validation yielded area under curves (AUCs) of 0.75 [Standard Error (SE) = 0.04; P < 0.001] and 0.67 (SE = 0.05; P = 0.0012) for the classification tasks of MM versus BB, and IM versus IB, respectively. On an independent test set of 19 IM/IB cases, the algorithm for distinguishing indeterminate nodules yielded an AUC value of 0.88 (SE = 0.09; P < 0.001), which was higher than the AUC of a commercially available molecular testing platform (AUC = 0.81, SE = 0.11; P < 0.005). Conclusion: Machine learning of computer-extracted texture features on gray-scale ultrasound images showed promising results classifying indeterminate thyroid nodules according to their surgical pathology.

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Published In

Journal of Medical Imaging

DOI

EISSN

2329-4310

ISSN

2329-4302

Publication Date

May 1, 2022

Volume

9

Issue

3

Related Subject Headings

  • 4003 Biomedical engineering
  • 3202 Clinical sciences
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Keutgen, X. M., Li, H., Memeh, K., Conn Busch, J., Williams, J., Lan, L., … Giger, M. L. (2022). A machine-learning algorithm for distinguishing malignant from benign indeterminate thyroid nodules using ultrasound radiomic features. Journal of Medical Imaging, 9(3). https://doi.org/10.1117/1.JMI.9.3.034501
Keutgen, X. M., H. Li, K. Memeh, J. Conn Busch, J. Williams, L. Lan, D. Sarne, et al. “A machine-learning algorithm for distinguishing malignant from benign indeterminate thyroid nodules using ultrasound radiomic features.” Journal of Medical Imaging 9, no. 3 (May 1, 2022). https://doi.org/10.1117/1.JMI.9.3.034501.
Keutgen XM, Li H, Memeh K, Conn Busch J, Williams J, Lan L, et al. A machine-learning algorithm for distinguishing malignant from benign indeterminate thyroid nodules using ultrasound radiomic features. Journal of Medical Imaging. 2022 May 1;9(3).
Keutgen, X. M., et al. “A machine-learning algorithm for distinguishing malignant from benign indeterminate thyroid nodules using ultrasound radiomic features.” Journal of Medical Imaging, vol. 9, no. 3, May 2022. Scopus, doi:10.1117/1.JMI.9.3.034501.
Keutgen XM, Li H, Memeh K, Conn Busch J, Williams J, Lan L, Sarne D, Finnerty B, Angelos P, Fahey TJ, Giger ML. A machine-learning algorithm for distinguishing malignant from benign indeterminate thyroid nodules using ultrasound radiomic features. Journal of Medical Imaging. 2022 May 1;9(3).

Published In

Journal of Medical Imaging

DOI

EISSN

2329-4310

ISSN

2329-4302

Publication Date

May 1, 2022

Volume

9

Issue

3

Related Subject Headings

  • 4003 Biomedical engineering
  • 3202 Clinical sciences