Doggart Peter, Kennedy Alan, Bond Raymond, Finlay Dewar, Smith Stephen W
PulseAI, 58 Howard Street, Belfast BT1 6PL, United Kingdom; Ulster University, Shore Road, BT37 OQB, United Kingdom.
Ulster University, Shore Road, BT37 OQB, United Kingdom.
J Electrocardiol. 2023 Jan-Feb;76:17-21. doi: 10.1016/j.jelectrocard.2022.10.015. Epub 2022 Nov 4.
Mobile Cardiac Outpatient Telemetry (MCOT) can be used to screen high risk patients for atrial fibrillation (AF). These devices rely primarily on algorithmic detection of AF events, which are then stored and transmitted to a clinician for review. It is critical the positive predictive value (PPV) of MCOT detected AF is high, and this often leads to reduced sensitivity, as device manufacturers try to limit false positives.
The purpose of this study was to design a two stage classifier using artificial intelligence (AI) to improve the PPV of MCOT detected atrial fibrillation episodes whilst maintaining high levels of detection sensitivity.
A low complexity, RR-interval based, AF classifier was paired with a deep convolutional neural network (DCNN) to create a two-stage classifier. The DCNN was limited in size to allow it to be embedded on MCOT devices. The DCNN was trained on 491,727 ECGs from a proprietary database and contained 128,612 parameters requiring only 158 KB of storage. The performance of the two-stage classifier was then assessed using publicly available datasets.
The sensitivity of AF detected by the low complexity classifier was high across all datasets (>93%) however the PPV was poor (<76%). Subsequent analysis by the DCNN increased episode PPV across all datasets substantially (>11%), with only a minor loss in sensitivity (<5%). This increase in PPV was due to a decrease in the number of false positive detections. Further analysis showed that DCNN processing was only required on around half of analysis windows, offering a significant computational saving against using the DCNN as a one-stage classifier.
DCNNs can be combined with existing MCOT classifiers to increase the PPV of detected AF episodes. This reduces the review burden for physicians and can be achieved with only a modest decrease in sensitivity.
移动心脏门诊遥测(MCOT)可用于筛查房颤(AF)高危患者。这些设备主要依靠算法检测房颤事件,然后将其存储并传输给临床医生进行审查。MCOT检测到的房颤的阳性预测值(PPV)很高至关重要,而这通常会导致灵敏度降低,因为设备制造商试图限制假阳性。
本研究的目的是设计一种使用人工智能(AI)的两阶段分类器,以提高MCOT检测到的房颤发作的PPV,同时保持高水平的检测灵敏度。
将一个基于RR间期的低复杂度房颤分类器与一个深度卷积神经网络(DCNN)配对,以创建一个两阶段分类器。DCNN的规模受到限制,以便能够嵌入到MCOT设备中。DCNN在来自专有数据库的491,727份心电图上进行训练,包含128,612个参数,仅需158 KB的存储空间。然后使用公开可用的数据集评估两阶段分类器的性能。
低复杂度分类器检测到的房颤在所有数据集中的灵敏度都很高(>93%),但PPV较差(<76%)。随后DCNN进行的分析使所有数据集中发作的PPV大幅提高(>11%),而灵敏度仅略有下降(<5%)。PPV的这种提高是由于假阳性检测数量的减少。进一步分析表明,仅在大约一半的分析窗口上需要进行DCNN处理,与将DCNN用作单阶段分类器相比,可显著节省计算量。
DCNN可与现有的MCOT分类器相结合,以提高检测到的房颤发作的PPV。这减轻了医生的审查负担,并且可以在灵敏度仅适度下降的情况下实现。