计算机科学
推论
软件部署
建筑
分类器(UML)
推理机
云计算
机器学习
系统体系结构
人工智能
随机森林
延迟(音频)
嵌入式系统
计算机体系结构
特征工程
集合(抽象数据类型)
深度学习
实时计算
中央处理器
网络体系结构
特征(语言学)
微服务
低延迟(资本市场)
分布式计算
仿形(计算机编程)
参考体系结构
设置覆盖问题
多核处理器
周转时间
面向服务的体系结构
作者
Ugonna Oleh,Roman Obermaisser
标识
DOI:10.1016/j.procs.2026.04.027
摘要
Major Depressive Disorder (MDD) requires continuous, longitudinal monitoring, yet current diagnostic methods rely on intermittent clinical visits. Ambient Assisted Living (AAL) environments offer a solution by enabling passive screening via acoustic biomarkers. However, a critical research gap exists in the deployability of state-of-the-art detection models within these environments. Existing Machine Learning (ML) approaches often rely on heavy GPU acceleration, making them computationally prohibitive for widespread deployment on standard medical or home-server infrastructure. To address this, this paper proposes a lightweight, service-oriented system architecture designed for integration into privacy-centric on-premise environments. We present a low-latency inference microservice that prioritizes engineering constraints, specifically CPU efficiency and transparency, over marginal accuracy gains. Leveraging the eGeMAPSv02 feature set and an optimized Random Forest classifier (F1=0.696), our system achieves an end-to-end inference latency of approximately 7.3s on standard commodity hardware, with the core inference engine executing in less than 120ms. This efficient architecture allows the service to be deployed as a containerized local network service, enabling scalable, privacy-conscious depression screening without the reliance on specialized hardware accelerators or cloud connectivity.
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