4.6 Article

Diagnostic Performance of an Artificial Intelligence Model Based on Contrast-Enhanced Ultrasound in Patients with Liver Lesions: A Comparative Study with Clinicians

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DIAGNOSTICS
卷 13, 期 21, 页码 -

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MDPI
DOI: 10.3390/diagnostics13213387

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artificial intelligence; contrast-enhanced ultrasound; liver tumors

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This study evaluates the accuracy of an automated method based on artificial intelligence algorithms for classifying liver lesions and compares its performance with that of two experienced clinicians. The findings show that the automated model outperforms the clinicians in terms of specificity for benign and malignant classification, but has lower sensitivity. The diagnostic accuracy for HCC and liver metastases is relatively lower for the automatic model compared to the experienced clinicians.
Contrast-enhanced ultrasound (CEUS) is widely used in the characterization of liver tumors; however, the evaluation of perfusion patterns using CEUS has a subjective character. This study aims to evaluate the accuracy of an automated method based on CEUS for classifying liver lesions and to compare its performance with that of two experienced clinicians. The system used for automatic classification is based on artificial intelligence (AI) algorithms. For an interpretation close to the clinical setting, both clinicians knew which patients were at high risk for hepatocellular carcinoma (HCC), but only one was aware of all the clinical data. In total, 49 patients with 59 liver tumors were included. For the benign and malignant classification, the AI model outperformed both clinicians in terms of specificity (100% vs. 93.33%); still, the sensitivity was lower (74% vs. 93.18% vs. 90.91%). In the second stage of multiclass diagnosis, the automatic model achieved a diagnostic accuracy of 69.93% for HCC and 89.15% for liver metastases. Readers demonstrated greater diagnostic accuracy for HCC (83.05% and 79.66%) and liver metastases (94.92% and 96.61%) compared to the AI system; however, both were experienced sonographers. The AI model could potentially assist and guide less-experienced clinicians to discriminate malignant from benign liver tumors with high accuracy and specificity.

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