Traumatic brain injuries present significant diagnostic challenges in emergency medicine, where the timely interpretation of medical images is crucial for patient outcomes. In this paper, we propose a novel AI-based approach for automatic radiology report generation tailored to cranial trauma cases. Our model integrates an AC-BiFPN with a Transformer architecture to capture and process complex medical imaging data such as CT and MRI scans. The AC-BiFPN extracts multi-scale features, enabling the detection of intricate anomalies like intracranial hemorrhages, while the Transformer generates coherent, contextually relevant diagnostic reports by modeling long-range dependencies. We evaluate the performance of our model on the RSNA Intracranial Hemorrhage Detection dataset, where it outperforms traditional CNN-based models in both diagnostic accuracy and report generation. This solution not only supports radiologists in high-pressure environments but also provides a powerful educational tool for trainee physicians, offering real-time feedback and enhancing their learning experience. Our findings demonstrate the potential of combining advanced feature extraction with transformer-based text generation to improve clinical decision-making in the diagnosis of traumatic brain injuries.
翻译:创伤性脑损伤在急诊医学中构成重大诊断挑战,其中医学影像的及时解读对患者预后至关重要。本文提出一种针对颅脑创伤病例的、基于人工智能的自动放射学报告生成新方法。我们的模型将AC-BiFPN与Transformer架构相结合,以捕获和处理CT与MRI扫描等复杂医学影像数据。AC-BiFPN提取多尺度特征,能够检测颅内出血等复杂异常,而Transformer通过建模长程依赖关系生成连贯且上下文相关的诊断报告。我们在RSNA颅内出血检测数据集上评估模型性能,结果显示其在诊断准确性和报告生成方面均优于传统基于CNN的模型。该解决方案不仅能在高压环境下为放射科医师提供支持,还可作为实习医师的强大教育工具,提供实时反馈并增强其学习体验。我们的研究结果表明,将先进特征提取与基于Transformer的文本生成相结合,有望改善创伤性脑损伤诊断中的临床决策。