A machine learning approach to Cepheid variable star classification using data alignment and maximum likelihood

2013 ◽  
Vol 2 ◽  
pp. 46-53 ◽  
Author(s):  
Ricardo Vilalta ◽  
Kinjal Dhar Gupta ◽  
Lucas Macri
PLoS ONE ◽  
2021 ◽  
Vol 16 (8) ◽  
pp. e0255977
Author(s):  
Bernard Aguilaniu ◽  
David Hess ◽  
Eric Kelkel ◽  
Amandine Briault ◽  
Marie Destors ◽  
...  

Facilitating the identification of extreme inactivity (EI) has the potential to improve morbidity and mortality in COPD patients. Apart from patients with obvious EI, the identification of a such behavior during a real-life consultation is unreliable. We therefore describe a machine learning algorithm to screen for EI, as actimetry measurements are difficult to implement. Complete datasets for 1409 COPD patients were obtained from COLIBRI-COPD, a database of clinicopathological data submitted by French pulmonologists. Patient- and pulmonologist-reported estimates of PA quantity (daily walking time) and intensity (domestic, recreational, or fitness-directed) were first used to assign patients to one of four PA groups (extremely inactive [EI], overtly active [OA], intermediate [INT], inconclusive [INC]). The algorithm was developed by (i) using data from 80% of patients in the EI and OA groups to identify ‘phenotype signatures’ of non-PA-related clinical variables most closely associated with EI or OA; (ii) testing its predictive validity using data from the remaining 20% of EI and OA patients; and (iii) applying the algorithm to identify EI patients in the INT and INC groups. The algorithm’s overall error for predicting EI status among EI and OA patients was 13.7%, with an area under the receiver operating characteristic curve of 0.84 (95% confidence intervals: 0.75–0.92). Of the 577 patients in the INT/INC groups, 306 (53%) were reclassified as EI by the algorithm. Patient- and physician- reported estimation may underestimate EI in a large proportion of COPD patients. This algorithm may assist physicians in identifying patients in urgent need of interventions to promote PA.


Author(s):  
Kanika Bhalla ◽  
Ashish Kumar

Novel coronavirus has caused a global pandemic which leads to acute respiratory disorder in humans. In this study, analysis of the transmission of communicable COVID19 disease in India is done. The machine learning model presents the comparison of India with other countries during initial phase of virus spread in India. After that its comparison with initial hard-hit countries is also done. Finally, we also performed time series analysis for prediction using prophet for the next seven days showing confirmed, recovered and deaths that will happen.


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