移动设备上的机器学习:用于皮肤癌检测的设备上推理应用程序

Xiangfeng Dai, Irena Spasic, B. Meyer, Samuel Chapman, F. Andrès
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引用次数: 64

摘要

移动医疗(mHealth)被认为是无处不在的医疗应用程序提供健康信息的最具变革性驱动因素之一。机器学习已被证明是分类医学图像以检测各种疾病的强大工具。然而,监督式机器学习需要大量的数据来训练模型,这些数据的存储和处理给移动应用带来了相当大的系统需求挑战。因此,许多研究集中于部署基于云的机器学习,它利用互联网连接来外包数据密集型计算。但是,这种方法也有一些缺点,例如与延迟和隐私相关的缺点,需要在敏感数据的上下文中考虑这些缺点。为了解决移动健康应用程序的这些挑战,我们提出了一个设备上的推理应用程序,并使用皮肤癌图像数据集来演示概念验证。我们使用10015张皮肤癌图像预训练了一个卷积神经网络模型。然后将模型部署在移动设备上,在那里进行推理过程,即当提供新的测试图像时,所有计算都在本地执行,测试数据保留在本地。这种方法减少了延迟、节省了带宽并提高了隐私性。
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Machine Learning on Mobile: An On-device Inference App for Skin Cancer Detection
Mobile health (mHealth) is considered one of the most transformative drivers for health informatics delivery of ubiquitous medical applications. Machine learning has proven to be a powerful tool in classifying medical images for detecting various diseases. However, supervised machine learning requires a large amount of data to train the model, whose storage and processing pose considerable system requirements challenges for mobile applications. Therefore, many studies focus on deploying cloud-based machine learning, which takes advantage of the Internet connection to outsource data intensive computing. However, this approach comes with certain drawbacks such as those related to latency and privacy, which need to be considered in the context of sensitive data. To tackle these challenges of mHealth applications, we present an on-device inference App and use a dataset of skin cancer images to demonstrate a proof of concept. We pre-trained a Convolutional Neural Network model using 10,015 skin cancer images. The model is then deployed on a mobile device, where the inference process takes place, i.e. when presented with new test image all computations are executed locally where the test data remains. This approach reduces latency, saves bandwidth and improves privacy.
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