A Knowledge-Guided Dual-Path Framework for Automated Liver MRI Sequence Classification

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Abstract

Purpose Accurate identification of liver MRI sequences and phases is crucial for streamlining clinical workflows, yet current automated methods remain limited in coverage and robustness for real-world practice. This study aims to develop a clinically feasible automated classification system for liver MRI sequences and phases. Methods To achieve this goal, we developed a knowledge-guided dual-path (KDP) framework. It integrates imaging features extracted by a convolutional neural network with semantic prior knowledge parsed from DICOM metadata. A rule-based fusion module, grounded in clinical protocols, was designed to perform global consistency checks and fine-grained adjustments, ensuring clinically plausible predictions across 18 sequence categories. This approach was externally validated on a multicenter test set of 2,208 sequences from 123 cases across 22 hospitals. Results The proposed method demonstrated excellent performance, with macro-average F1-scores of 0.9763 on the internal test set (n = 7,141 sequences) and 0.9676 on the external, multicentric test set (n = 2,208 sequences). The KDP framework significantly outperformed the image-only model, with a macro F1-score of 0.9650 versus 0.9154 on the 12 shared categories (McNemar’s test, χ² = 53.6, p  < 0.001). Conclusion The proposed method provides accuracy and fully automated discrimination of liver MRI series. Its validated robustness across multicentric data highlights its potential for clinical integration.

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