An I-Q-Time 3-dimensional post-equalization algorithm based on DBSCAN of machine learning in CAP VLC system

2019 ◽  
Vol 430 ◽  
pp. 299-303 ◽  
Author(s):  
Xingyu Lu ◽  
Liang Qiao ◽  
Yingjun Zhou ◽  
Weixiang Yu ◽  
Nan Chi
2020 ◽  
Vol 11 (2) ◽  
pp. 508-515 ◽  
Author(s):  
Will Gerrard ◽  
Lars A. Bratholm ◽  
Martin J. Packer ◽  
Adrian J. Mulholland ◽  
David R. Glowacki ◽  
...  

The IMPRESSION machine learning system can predict NMR parameters for 3D structures with similar results to DFT but in seconds rather than hours.


2021 ◽  
Vol 10 (6) ◽  
pp. 1279
Author(s):  
Andrea Barbieri ◽  
Francesca Bursi ◽  
Giovanni Camaioni ◽  
Anna Maisano ◽  
Jacopo Francesco Imberti ◽  
...  

A recently developed algorithm for 3D analysis based on machine learning (ML) principles detects left ventricular (LV) mass without any human interaction. We retrospectively studied the correlation between 2D-derived linear dimensions using the ASE/EACVI-recommended formula and 3D automated, ML-based methods (Philips HeartModel) regarding LV mass quantification in unselected patients undergoing echocardiography. We included 130 patients (mean age 60 ± 18 years; 45% women). There was only discrete agreement between 2D and 3D measurements of LV mass (r = 0.662, r2 = 0.348, p < 0.001). The automated algorithm yielded an overestimation of LV mass compared to the linear method (Bland–Altman positive bias of 13.1 g with 95% limits of the agreement at 4.5 to 21.6 g, p = 0.003, ICC 0.78 (95%CI 0.68−8.4). There was a significant proportional bias (Beta −0.22, t = −2.9) p = 0.005, the variance of the difference varied across the range of LV mass. When the published cut-offs for LV mass abnormality were used, the observed proportion of overall agreement was 77% (kappa = 0.32, p < 0.001). In consecutive patients undergoing echocardiography for any indications, LV mass assessment by 3D analysis using a novel ML-based algorithm showed systematic differences and wide limits of agreements compared with quantification by ASE/EACVI- recommended formula when the current cut-offs and partition values were applied.


2014 ◽  
Vol 484-485 ◽  
pp. 907-911
Author(s):  
Jun Sun

The construction of object 3-dimensional image is the thinking base of machine learning, it is important to machine recognize the outside world. The current algorithms of object 3-dimensional image construction are mainly based on the least squares method (LSM) in linear or nonlinear models, all of them existed some defects and deficiencies. The paper introduced the construction principle of 3-dimensional image by support vector machine, then the algorithm and step was put forward, as well as the key code in the Matlab7.4.


2020 ◽  
Vol 74 (5) ◽  
pp. 842-845 ◽  
Author(s):  
Patrick S. Harty ◽  
Breck Sieglinger ◽  
Steven B. Heymsfield ◽  
John A. Shepherd ◽  
David Bruner ◽  
...  

2021 ◽  
Vol 4 (1) ◽  
Author(s):  
Nadav Rakocz ◽  
Jeffrey N. Chiang ◽  
Muneeswar G. Nittala ◽  
Giulia Corradetti ◽  
Liran Tiosano ◽  
...  

AbstractOne of the core challenges in applying machine learning and artificial intelligence to medicine is the limited availability of annotated medical data. Unlike in other applications of machine learning, where an abundance of labeled data is available, the labeling and annotation of medical data and images require a major effort of manual work by expert clinicians who do not have the time to annotate manually. In this work, we propose a new deep learning technique (SLIVER-net), to predict clinical features from 3-dimensional volumes using a limited number of manually annotated examples. SLIVER-net is based on transfer learning, where we borrow information about the structure and parameters of the network from publicly available large datasets. Since public volume data are scarce, we use 2D images and account for the 3-dimensional structure using a novel deep learning method which tiles the volume scans, and then adds layers that leverage the 3D structure. In order to illustrate its utility, we apply SLIVER-net to predict risk factors for progression of age-related macular degeneration (AMD), a leading cause of blindness, from optical coherence tomography (OCT) volumes acquired from multiple sites. SLIVER-net successfully predicts these factors despite being trained with a relatively small number of annotated volumes (hundreds) and only dozens of positive training examples. Our empirical evaluation demonstrates that SLIVER-net significantly outperforms standard state-of-the-art deep learning techniques used for medical volumes, and its performance is generalizable as it was validated on an external testing set. In a direct comparison with a clinician panel, we find that SLIVER-net also outperforms junior specialists, and identifies AMD progression risk factors similarly to expert retina specialists.


Author(s):  
Kai Siang Chan ◽  
Shanying Liang ◽  
Yuan Teng Cho ◽  
Yam Meng Chan ◽  
Audrey Hui Min Tan ◽  
...  

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