Your browser doesn't support javascript.
loading
Show: 20 | 50 | 100
Results 1 - 4 de 4
Filter
Add more filters










Database
Publication year range
1.
IEEE Trans Cybern ; PP2024 Jun 21.
Article in English | MEDLINE | ID: mdl-38905088

ABSTRACT

With the advance of smart manufacturing and information technologies, the volume of data to process is increasing accordingly. Current solutions for big data processing resort to distributed stream processing systems, such as Apache Flink and Spark. However, such frameworks face challenges of resource underutilization and high latency in big data application scenarios. In this article, we propose SPSC, a serverless-based stream computing framework where events are discretized into the atomic stream and stateless Lambda functions are taken as context-irrelevant operators, achieving task parallelism and inherent data parallelism in processing. Also, we implement a prototype of the framework on Amazon Web service (AWS) using AWS Lambda, AWS simple queue service, and AWS DynamoDB. The evaluation shows that compared with Alibaba's real-time computing Flink version, SPSC outperforms by 10.12% when the overhead is close.

2.
Article in English | MEDLINE | ID: mdl-37262115

ABSTRACT

With the fast development of AI technologies, deep learning is widely applied for biomedical data analytics and digital healthcare. However, there remain gaps between AI-aided diagnosis and real-world healthcare demands. For example, hemodynamic parameters of the middle cerebral artery (MCA) have significant clinical value for diagnosing adverse perinatal results. Nevertheless, the current measurement procedure is tedious for sonographers. To reduce the workload of sonographers, we propose MCAS-GP, a deep learning-empowered framework that tackles the Middle Cerebral Artery Segmentation and Gate Proposition. MCAS-GP can automatically segment the region of the MCA and detect the corresponding position of the gate in the procedure of fetal MCA Doppler assessment. In MCAS-GP, a novel learnable atrous spatial pyramid pooling (LASPP) module is designed to adaptively learn multi-scale features. We also propose a novel evaluation metric, Affiliation Index, for measuring the effectiveness of the position of the output gate. To evaluate our proposed MCAS-GP, we build a large-scale MCA dataset, collaborating with the International Peace Maternity and Child Health Hospital of China welfare institute (IPMCH). Extensive experiments on the MCA dataset and two other public surgical datasets demonstrate that MCAS-GP can achieve considerable performance improvement in both accuracy and inference time.

3.
IEEE/ACM Trans Comput Biol Bioinform ; 20(4): 2494-2505, 2023.
Article in English | MEDLINE | ID: mdl-35786559

ABSTRACT

Sufficient annotated data is critical to the success of deep learning methods. Annotating for vessel segmentation in X-ray coronary angiograms is extremely difficult because of the small and complex structures to be processed. Although unsupervised domain adaptation methods can be utilized to alleviate the annotation burden by using data in other domains, e.g., eye fundus images, these methods cannot perform well due to the characteristic of medical images. Data augmentation can help improve the similarity of source domain and target domain in unsupervised domain adaptation tasks. Existing data augmentation methods play a limited role in improving domain adaptation performance, especially for special medical image segmentation tasks. In this paper, we propose an effective perceptual data augmentation method to improve the similarity between eye fundus images and coronary angiograms by synthesizing virtual samples. Auto Foreground Augment method is designed to search for geometric transformations that improve the similarity between foreground vessels of eye fundus images and coronary angiograms. The Haar Wavelet-Based Perceptual Similarity Index is utilized to guide the synthesis of virtual samples in foreground and background mixup. Extensive experiments show that our data augmentation method can synthesize high-quality virtual samples and thus improve the domain adaptation performance. To our best knowledge, this is the first work to apply perceptual data augmentation to vessel segmentation in coronary angiograms.

4.
Guang Pu Xue Yu Guang Pu Fen Xi ; 31(9): 2542-5, 2011 Sep.
Article in Chinese | MEDLINE | ID: mdl-22097867

ABSTRACT

It is quick and accurate to on-line monitor the sample condition of laser cleaning by means of laser-induced plasma spectrum in air. In the present article, the echelle grating spectrometer was used to detect the plasma spectral lines induced by pulsed laser interaction with copper coin samples with or without contamination. The spectrogram showed that there were clear Cu I spectrum lines and air atom spectrum lines of N I and O I. In order to eliminate the uncertainty of single measurement, the statistical regularity of N I and O I spectrum lines was analyzed. Their intensity distribution laws were consistent and their relative standard deviations were the same basically. So a single measurement spectrum could be used to monitor cleaning process. The spectra of copper samples with contamination consisted of many elements atomic spectral lines and continuous spectral lines. But there are Cu I spectral lines in the spectra of clean copper samples. As a result, the authors could detect the change of spectral lines to judge whether the laser cleaning samples were clean.

SELECTION OF CITATIONS
SEARCH DETAIL
...