Zhu Bingzhao, Farivar Masoud, Shoaran Mahsa
IEEE Trans Biomed Circuits Syst. 2020 Aug;14(4):692-704. doi: 10.1109/TBCAS.2020.3004544. Epub 2020 Jun 24.
Classifiers that can be implemented on chip with minimal computational and memory resources are essential for edge computing in emerging applications such as medical and IoT devices. This paper introduces a machine learning model based on oblique decision trees to enable resource-efficient classification on a neural implant. By integrating model compression with probabilistic routing and implementing cost-aware learning, our proposed model could significantly reduce the memory and hardware cost compared to state-of-the-art models, while maintaining the classification accuracy. We trained the resource-efficient oblique tree with power-efficient regularization (ResOT-PE) on three neural classification tasks to evaluate the performance, memory, and hardware requirements. On seizure detection task, we were able to reduce the model size by 3.4× and the feature extraction cost by 14.6× compared to the ensemble of boosted trees, using the intracranial EEG from 10 epilepsy patients. In a second experiment, we tested the ResOT-PE model on tremor detection for Parkinson's disease, using the local field potentials from 12 patients implanted with a deep-brain stimulation (DBS) device. We achieved a comparable classification performance as the state-of-the-art boosted tree ensemble, while reducing the model size and feature extraction cost by 10.6× and 6.8×, respectively. We also tested on a 6-class finger movement detection task using ECoG recordings from 9 subjects, reducing the model size by 17.6× and feature computation cost by 5.1×. The proposed model can enable a low-power and memory-efficient implementation of classifiers for real-time neurological disease detection and motor decoding.
对于医疗和物联网设备等新兴应用中的边缘计算而言,能够在芯片上以最少的计算和内存资源实现的分类器至关重要。本文介绍了一种基于倾斜决策树的机器学习模型,以实现神经植入物上的资源高效分类。通过将模型压缩与概率路由相结合,并实施成本感知学习,与现有模型相比,我们提出的模型可以显著降低内存和硬件成本,同时保持分类准确率。我们在三个神经分类任务上使用高效功率正则化(ResOT-PE)训练了资源高效的倾斜树,以评估其性能、内存和硬件需求。在癫痫发作检测任务中,与使用10名癫痫患者的颅内脑电图的提升树集成模型相比,我们能够将模型大小减少3.4倍,特征提取成本减少14.6倍。在第二个实验中,我们使用12名植入深部脑刺激(DBS)设备患者的局部场电位,在帕金森病震颤检测中测试了ResOT-PE模型。我们实现了与现有最先进的提升树集成模型相当的分类性能,同时分别将模型大小和特征提取成本减少了10.6倍和6.8倍。我们还使用9名受试者的脑皮层电图记录在一个6类手指运动检测任务上进行了测试,将模型大小减少了17.6倍,特征计算成本减少了5.1倍。所提出的模型能够实现用于实时神经疾病检测和运动解码的分类器的低功耗和内存高效实现。