College of Electrical Engineering, Sichuan University, Chengdu, 610065, China.
Medical Equipment Innovation Research Center, Biomedical Big Data Center, Med-X Center for Informatics, West China Hospital, Sichuan University, Chengdu, 610041, China.
Artif Intell Med. 2024 Mar;149:102807. doi: 10.1016/j.artmed.2024.102807. Epub 2024 Feb 12.
The breakdown of healthcare facilities is a huge challenge for hospitals. Medical images obtained by Computed Tomography (CT) provide information about the patients' physical conditions and play a critical role in diagnosis of disease. To deliver high-quality medical images on time, it is essential to minimize the occurrence frequencies of anomalies and failures of the equipment.
We extracted the real-time CT equipment status time series data such as oil temperature, of three equipment, between May 19, 2020, and May 19, 2021. Tube arcing is treated as the classification label. We propose a dictionary-based data-driven model SAX-HCBOP, where the two methods, Histogram-based Information Gain Binning (HIGB) and Coefficient improved Bag of Pattern (CoBOP), are implemented to transform the data into the bag-of-words paradigm. We compare our model to the existing predictive maintenance models based on statistical and time series classification algorithms.
The results show that the Accuracy, Recall, Precision and F1-score of the proposed model achieve 0.904, 0.747, 0.417, 0.535, respectively. The oil temperature is identified as the most important feature. The proposed model is superior to other models in predicting CT equipment anomalies. In addition, experiments on the public dataset also demonstrate the effectiveness of the proposed model.
The two proposed methods can improve the performance of the dictionary-based time series classification methods in predictive maintenance. In addition, based on the proposed real-time anomaly prediction system, the model assists hospitals in making accurate healthcare facilities maintenance decisions.
医疗设施的崩溃对医院来说是一个巨大的挑战。计算机断层扫描(CT)获得的医学图像提供了有关患者身体状况的信息,对疾病的诊断起着至关重要的作用。为了及时提供高质量的医学图像,必须最大限度地减少设备异常和故障的发生频率。
我们提取了三台设备的实时 CT 设备状态时间序列数据,例如油温,时间范围为 2020 年 5 月 19 日至 2021 年 5 月 19 日。将管电弧视为分类标签。我们提出了基于字典的数据驱动模型 SAX-HCBOP,其中实现了基于直方图的信息增益分箱(HIGB)和改进系数的袋模式(CoBOP)两种方法,将数据转换为词袋范式。我们将我们的模型与基于统计和时间序列分类算法的现有预测性维护模型进行了比较。
结果表明,所提出模型的准确率、召回率、精度和 F1 得分分别达到 0.904、0.747、0.417 和 0.535。油温被确定为最重要的特征。与其他模型相比,所提出的模型在预测 CT 设备异常方面表现更为出色。此外,在公共数据集上的实验也证明了所提出模型的有效性。
所提出的两种方法可以提高基于字典的时间序列分类方法在预测性维护中的性能。此外,基于所提出的实时异常预测系统,该模型可以帮助医院做出准确的医疗设施维护决策。