Abstract

BackgroundVarious combinations of ultrasonographic (US) characteristics are increasingly utilized to classify thyroid nodules. But they lack theories, and heavily depend on radiologists’ experience, and cannot correctly classify thyroid nodules. Hence, our main purpose of this manuscript is to select the US characteristics significantly associated with malignancy and to develop an efficient scoring system for facilitating ultrasonic clinicians to correctly identify thyroid malignancy.MethodsA logistic regression (LR) model is utilized to identify the potential thyroid malignancy, and the least absolute shrinkage and selection operator (LASSO) method is adopted to simultaneously select US characteristics significantly associated with malignancy and estimate parameters in LR model. Based on the selected US characteristics, we calculate the probability for each of thyroid nodules via random forest (RF) and extreme learning machine (ELM), and develop a scoring system to classify thyroid nodules. For comparison, we also consider eight state-of-the-art methods such as support vector machine (SVM), neural network (NET), etc. The area under the receiver operating characteristic curve (AUC) is employed to measure the accuracy of various classifiers.ResultsThe US characteristics: nodule size, AP/T≥1, solid component, micro-calcifications, hackly border, hypoechogenicity, presence of halo, unclear border, irregular margin, and central vascularity are selected as the significant predictors associated with thyroid malignancy via the LASSO LR (LLR). Using the developed scoring system, thyroid nodules are classified into the following four categories: benign, low suspicion, intermediate suspicion, and high suspicion, whose rates of malignancy correctly identified for RF (ELM) method on the testing dataset are 0.0% (4.3%), 14.3% (50.0%), 58.1% (59.1%) and 96.1% (97.7%), respectively.ConclusionLLR together with RF performs better than other methods in identifying malignancy, especially for abnormal nodules, in terms of risk scores. The developed scoring system can well predict the risk of malignancy and guide medical doctors to make management decisions for reducing the number of unnecessary biopsies for benign nodules.

Highlights

  • Various combinations of ultrasonographic (US) characteristics are increasingly utilized to classify thyroid nodules

  • Benign, low suspicion, intermediate suspicion, and high suspicion, whose rates of malignancy correctly identified for random forest (RF) (ELM) method on the testing dataset are 0.0% (4.3%), 14.3% (50.0%), 58.1% (59.1%) and 96.1% (97.7%), respectively

  • The main purpose of this paper is to develop an objective and quantitative scoring system to assist ultrasonic clinicians for identifying the thyroid cancer by (i) adopting a least absolute shrinkage and selection operator (LASSO) method to efficiently select the critical US characteristics significantly associated with malignancy as potential predictors of malignancy; (ii) using machine learning algorithms to calculate the class probability of each nodule, which is utilized to classify for each nodule; (iii) proposing a scoring system that can be used to predict the risk for malignancy and guide medical doctors to make management decisions for reducing the number of unnecessary biopsies for benign nodules

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Summary

Introduction

Various combinations of ultrasonographic (US) characteristics are increasingly utilized to classify thyroid nodules. For most sonographers, the critical challenge is to distinguish both malignant thyroid nodules and benign ones. To this end, some US characteristics, such as the presence of unclear border, micro-calcifications, irregular shape, solid component, inner echo [1,2,3], are widely adopted to assess nodules at risk for malignancy. It may be rather desirable to develop an efficient approach to improve the diagnostic accuracy for thyroid malignancy by incorporating multiple characteristics mentioned above. Distinguishing inactive characteristics and active ones may largely improve the accuracy of the diagnosis of thyroid malignancy

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