Department of Digital Health, Samsung Advanced Institute for Health Sciences & Technology, Sungkyunkwan University, Seoul, Republic of Korea.
Department of Otorhinolaryngology-Head and Neck Surgery, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, Republic of Korea.
J Med Internet Res. 2021 Sep 21;23(9):e29678. doi: 10.2196/29678.
Recently, the analysis of endolymphatic hydropses (EHs) via inner ear magnetic resonance imaging (MRI) for patients with Ménière disease has been attempted in various studies. In addition, artificial intelligence has rapidly been incorporated into the medical field. In our previous studies, an automated algorithm for EH analysis was developed by using a convolutional neural network. However, several limitations existed, and further studies were conducted to compensate for these limitations.
The aim of this study is to develop a fully automated analytic system for measuring EH ratios that enhances EH analysis accuracy and clinical usability when studying Ménière disease via MRI.
We proposed the 3into3Inception and 3intoUNet networks. Their network architectures were based on those of the Inception-v3 and U-Net networks, respectively. The developed networks were trained for inner ear segmentation by using the magnetic resonance images of 124 people and were embedded in a new, automated EH analysis system-inner-ear hydrops estimation via artificial intelligence (INHEARIT)-version 2 (INHEARIT-v2). After fivefold cross-validation, an additional test was performed by using 60 new, unseen magnetic resonance images to evaluate the performance of our system. The INHEARIT-v2 system has a new function that automatically selects representative images from a full MRI stack.
The average segmentation performance of the fivefold cross-validation was measured via the intersection of union method, resulting in performance values of 0.743 (SD 0.030) for the 3into3Inception network and 0.811 (SD 0.032) for the 3intoUNet network. The representative magnetic resonance slices (ie, from a data set of unseen magnetic resonance images) that were automatically selected by the INHEARIT-v2 system only differed from a maximum of 2 expert-selected slices. After comparing the ratios calculated by experienced physicians and those calculated by the INHEARIT-v2 system, we found that the average intraclass correlation coefficient for all cases was 0.941; the average intraclass correlation coefficient of the vestibules was 0.968, and that of the cochleae was 0.914. The time required for the fully automated system to accurately analyze EH ratios based on a patient's MRI stack was approximately 3.5 seconds.
In this study, a fully automated full-stack magnetic resonance analysis system for measuring EH ratios was developed (named INHEARIT-v2), and the results showed that there was a high correlation between the expert-calculated EH ratio values and those calculated by the INHEARIT-v2 system. The system is an upgraded version of the INHEARIT system; it has higher segmentation performance and automatically selects representative images from an MRI stack. The new model can help clinicians by providing objective analysis results and reducing the workload for interpreting magnetic resonance images.
最近,已有多项研究尝试通过内耳磁共振成像(MRI)对内耳积水(EH)进行分析。此外,人工智能已迅速被引入医学领域。在我们之前的研究中,我们使用卷积神经网络开发了一种用于 EH 分析的自动化算法。然而,该算法存在一些局限性,我们进一步进行了研究以弥补这些局限性。
本研究旨在开发一种全自动 EH 比值分析系统,该系统可提高通过 MRI 研究梅尼埃病时的 EH 分析准确性和临床实用性。
我们提出了 3into3Inception 和 3intoUNet 网络。它们的网络架构分别基于 Inception-v3 和 U-Net 网络。通过使用 124 人的磁共振图像对开发的网络进行内耳分割训练,并将其嵌入到一个新的全自动 EH 分析系统——通过人工智能对内耳积水的评估(INHEARIT)-版本 2(INHEARIT-v2)中。在进行五重交叉验证后,使用 60 张新的未见磁共振图像进行了额外的测试,以评估我们系统的性能。INHEARIT-v2 系统具有一项新功能,可自动从完整的 MRI 堆栈中选择有代表性的图像。
五重交叉验证的平均分割性能通过并集方法进行测量,结果为 3into3Inception 网络为 0.743(SD 0.030),3intoUNet 网络为 0.811(SD 0.032)。INHEARIT-v2 系统自动选择的代表性磁共振切片(即来自未见磁共振图像数据集)与最多 2 个专家选择的切片仅相差 2 张。在比较经验丰富的医生计算的比值和 INHEARIT-v2 系统计算的比值后,我们发现所有病例的平均组内相关系数为 0.941;前庭的平均组内相关系数为 0.968,耳蜗的平均组内相关系数为 0.914。基于患者的 MRI 堆栈,全自动系统准确分析 EH 比值所需的时间约为 3.5 秒。
本研究开发了一种全自动全堆栈磁共振 EH 比值分析系统(命名为 INHEARIT-v2),结果表明专家计算的 EH 比值与 INHEARIT-v2 系统计算的比值之间存在高度相关性。该系统是 INHEARIT 系统的升级版;它具有更高的分割性能,并自动从 MRI 堆栈中选择有代表性的图像。该新模型可以通过提供客观的分析结果和减少磁共振图像解释的工作量来帮助临床医生。