In recent years, several computer-aided diagnosis systems emerged for the diagnosis of
thyroid gland disorders using ultrasound imaging. These systems based on machine learning
algorithms may offer a second opinion to radiologists by evaluating a malignancy risk of
thyroid tissue, thus increasing the overall diagnostic accuracy of ultrasound imaging.
Although current computer-aided diagnosis systems exhibit promising results, their use in
clinical practice is limited. One of the main limitations is that the majority of them use
direction-dependent features. Our intention has been to design a computer-aided diagnosis
system, which will use only direction-independent features, that is, it will not be
dependent on the orientation and the inclination angle of the ultrasound probe when
acquiring the image. We have, therefore, applied histogram analysis and segmentation-based
fractal texture analysis algorithm, which calculates direction-independent features only.
In our study, 40 thyroid nodules (20 malignant and 20 benign) were used to extract several
features, such as histogram parameters, fractal dimension, and mean brightness value in
different grayscale bands (obtained by 2-threshold binary decomposition). The features
were then used in support vector machine and random forests classifiers to differentiate
nodules into malignant and benign classes. Using leave-one-out cross-validation method,
the overall accuracy was 92.42% for random forests and 94.64% for support vector machine.
Results show that both methods are useful in practice; however, support vector machine
provides better results for this application. Proposed computer-aided diagnosis system can
provide support to radiologists in their current diagnosis of thyroid nodules, whereby it
can optimize the overall accuracy of ultrasound imaging.
Less than half of the positively screened pregnant women can be classified as high-risk and almost half of them had not autoimmune pattern in TUS. High- and low-risk pregnant women have similar clinical and laboratory characteristics.
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