论文标题
使用CBCT和内部脱氧核糖核能增强基于人工智能的诊断:临床验证真菌球,鼻窦炎和上颌窦中的正常情况
Enhanced artificial intelligence-based diagnosis using CBCT with internal denoising: Clinical validation for discrimination of fungal ball, sinusitis, and normal cases in the maxillary sinus
论文作者
论文摘要
与常规计算机断层扫描相比,锥形梁计算机断层扫描(CBCT)提供了低辐射剂量和成本的靶标的3D体积成像,并且广泛用于检测偏巴鼻窦疾病。然而,由于重建限制,检测软组织病变缺乏灵敏度。因此,只有在CBCT阅读方面具有专业知识的医生才能区分固有的文物或噪声和疾病,从而限制了这种成像方式的使用。 CBCT克服经验丰富的医生短缺的基于人工智能(AI)的计算机辅助诊断方法的发展引起了极大的关注。然而,尚未设计基于AI的高级诊断来解决CBCT中固有的噪声,这阻止了CBCT的AI解决方案的实际使用。为了解决这个问题,我们建议使用带有Denoising模块的CBCT基于AI的计算机辅助诊断方法。该模块在诊断之前实施,以重建与输入CBCT图像相对应的内部基地全剂量扫描,从而改善诊断性能。统一诊断鼻窦真菌球,慢性鼻孔炎和正常情况的外部验证结果表明,所提出的方法将微型,宏观平均AUC和准确性提高了7.4%,5.6%和9.6%(从86.2、87.0,87.0和73.4至93.6,92.6,83.6和83.0%的基础上,相比, (从71.7%到83.0%),表明技术分化和临床有效性。对使用CBCT进行基于AI的诊断的这项开创性研究表明,转化可以改善Sinonasal区域的图像中的诊断性能和读取器的可解释性,从而为基于AI的诊断解决方案的开发提供了新的方法和放射线图像重建的方法。
The cone-beam computed tomography (CBCT) provides 3D volumetric imaging of a target with low radiation dose and cost compared with conventional computed tomography, and it is widely used in the detection of paranasal sinus disease. However, it lacks the sensitivity to detect soft tissue lesions owing to reconstruction constraints. Consequently, only physicians with expertise in CBCT reading can distinguish between inherent artifacts or noise and diseases, restricting the use of this imaging modality. The development of artificial intelligence (AI)-based computer-aided diagnosis methods for CBCT to overcome the shortage of experienced physicians has attracted substantial attention. However, advanced AI-based diagnosis addressing intrinsic noise in CBCT has not been devised, discouraging the practical use of AI solutions for CBCT. To address this issue, we propose an AI-based computer-aided diagnosis method using CBCT with a denoising module. This module is implemented before diagnosis to reconstruct the internal ground-truth full-dose scan corresponding to an input CBCT image and thereby improve the diagnostic performance. The external validation results for the unified diagnosis of sinus fungal ball, chronic rhinosinusitis, and normal cases show that the proposed method improves the micro-, macro-average AUC, and accuracy by 7.4, 5.6, and 9.6% (from 86.2, 87.0, and 73.4 to 93.6, 92.6, and 83.0%), respectively, compared with a baseline while improving human diagnosis accuracy by 11% (from 71.7 to 83.0%), demonstrating technical differentiation and clinical effectiveness. This pioneering study on AI-based diagnosis using CBCT indicates denoising can improve diagnostic performance and reader interpretability in images from the sinonasal area, thereby providing a new approach and direction to radiographic image reconstruction regarding the development of AI-based diagnostic solutions.