disease clustering
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Author(s):  
Nitesh Sureja ◽  
Bharat Chawda ◽  
Avani Vasant

Heart <span>diseases have a severe impact on human life and health. Cardiovascular deaths and diseases have increased at a fast rate worldwide. The early prediction of these diseases is necessary to prevent deaths. Now a day; a considerable amount of medical information is available and collected as databases. An efficient technique is required to analyse this data and predict the disease. Clustering can help medical practitioners in diagnosis by classifying the patient’s data collected for a disease. Clustering techniques can analyse such data based on each patient-generated and predict disease. A new prediction model based on salp swarm algorithm and support vector machine is proposed in this research for predicting heart diseases. Salp swarm algorithm is used to select the useful features from the database. Support vector machine classifier is used to predict heart diseases. Results obtained are compared with the other algorithms available in the literature. It is observed that the proposed approach produces better results with accuracy 98.75% and 98.46% with the dataset 1 and 2, respectively. In addition to this, the algorithm converges in significantly less time in comparison to other algorithms. This algorithm might become a perfect supporting tool for medical </span>practitioners.


Author(s):  
Yugandhara Hingankar ◽  
Vaishali Taksande

Background: The most common cause of liver illness in pregnancy is intrahepatic cholestasis (IHCP). It has a varying incidence due to geographic variance; factors such as advanced age, multiple pregnancy, family history, and previous pregnancy cholestasis have demonstrated a higher prevalence in these patients. Cholestasis in pregnancy has an aetiology that is currently unknown. It usually occurs after ovarian hyperstimulation syndrome in early pregnancy and coincides with growing oestrogen levels in the second half of pregnancy [1]. The ABCB4 gene mutation is largely associated in a subtype of progressive familial intrahepatic cholestasis, where disease clustering in first-degree relatives increases hereditary predisposition. Itchy palms and soles with elevated liver enzymes and bile acids are the most common symptoms. Some of the reported maternal problems in these patients include preterm labour, HELLP syndrome, acute fatty liver of pregnancy, and postpartum haemorrhage [2]. There are no precise antenatal foetal monitoring tests that can predict foetal fatalities in the womb. To reduce perinatal death with expectant treatment beyond this gestation, it is recommended that a pregnancy be terminated near 36–37 weeks of pregnancy.


2021 ◽  
Vol 15 (4) ◽  
Author(s):  
Sneha Jadhav ◽  
Chenjin Ma ◽  
Yefei Jiang ◽  
Ben-Chang Shia ◽  
Shuangge Ma

2021 ◽  
Vol 11 (5) ◽  
pp. 20200058
Author(s):  
Alexandra G. Hammerberg ◽  
Patricia Ann Kramer

The dynamic system that is the bipedal body in motion is of interest to engineers, clinicians and biological anthropologists alike. Spatial statistics is more familiar to public health researchers as a way of analysing disease clustering and spread; nonetheless, this is a practical approach to the two-dimensional topography of the foot. We quantified the clustering of the centre of pressure (CoP) on the foot for peak braking and propulsive vertical ground reaction forces (GRFs) over multiple, contiguous steps to assess the consistency of the location of peak forces on the foot during walking. The vertical GRFs of 11 participants were collected continuously via a wireless insole system (MoticonReGo AG) across various experimental conditions. We hypothesized that CoPs would cluster in the hindfoot for braking and forefoot for propulsion, and that braking would demonstrate more consistent clustering than propulsion. Contrary to our hypotheses, we found that CoPs during braking are inconsistent in their location, and CoPs during propulsion are more consistent and clustered across all participants and all trials. These results add to our understanding of the applied forces on the foot so that we can better predict fatigue failures and better understand the mechanisms that shaped the modern bipedal form.


2021 ◽  
Author(s):  
Sean B. Wilson ◽  
Sara E. Howden ◽  
Jessica M. Vanslambrouck ◽  
Aude Dorison ◽  
Jose Alquicira-Hernandez ◽  
...  

AbstractKidney organoids provide a valuable resource to understand kidney development and disease. Clustering algorithms and marker genes fail to accurately and robustly classify cellular identity between human pluripotent stem cell (hPSC)-derived organoid datasets. Here we present a new method able to accurately classify kidney cell subtypes, a hierarchical machine learning model trained using comprehensive reference data from single cell RNA-sequencing of human fetal kidney (HFK). We demonstrate the tool’s (DevKidCC) performance by application to all published kidney organoid datasets and a novel dataset. DevKidCC is available on Github and can be used on any kidney single cell RNA-sequence data.


Maturitas ◽  
2020 ◽  
Vol 137 ◽  
pp. 45-49
Author(s):  
Juan E. Blümel ◽  
Rodrigo M. Carrillo-Larco ◽  
María S. Vallejo ◽  
Peter Chedraui

Author(s):  
Emmanuel Peprah ◽  
Elisabet Caler ◽  
Anya Snyder ◽  
Fassil Ketema

The HIV epidemic has dramatically changed over the past 30 years; there are now fewer newly infected people (especially children), fewer AIDS-related deaths, and more people with HIV (PWH) receiving treatment. However, the HIV epidemic is far from over. Despite the tremendous advances in anti-retroviral therapies (ART) and the implementation of ART regimens, HIV incidence (number of new infections over a defined period of time) and prevalence (the burden of HIV infection) in certain regions of the world and socio-economic groups are still on the rise. HIV continues to disproportionally affect highly marginalized populations that constitute higher-risk and stigmatized groups, underserved and/or neglected populations. In addition, it is not uncommon for PWH to suffer enhanced debilitating conditions resulting from the synergistic interactions of both communicable diseases (CDs) and non-communicable diseases (NCDs). While research utilizing only a comorbidities framework has advanced our understanding of the biological settings of the co-occurring conditions from a molecular and mechanistic view, harmful interactions between comorbidities are often overlooked, particularly under adverse socio-economical and behavioral circumstances, likely prompting disease clustering in PWH. Synergistic epidemics (syndemics) research aims to capture these understudied interactions: the mainly non-biological aspects that are central to interpret disease clustering in the comorbidities/multi-morbidities only framework. Connecting population-level clustering of social and health problems through syndemic interventions has proved to be a critical knowledge gap that will need to be addressed in order to improve prevention and care strategies and bring us a step closer to ending the HIV epidemic.


2020 ◽  
pp. 100438
Author(s):  
Timothy M. Pollington ◽  
Michael J. Tildesley ◽  
T. Déirdre Hollingsworth ◽  
Lloyd A.C. Chapman

2020 ◽  
Vol 14 (1) ◽  
pp. 1449-1478
Author(s):  
Claudia Wehrhahn ◽  
Samuel Leonard ◽  
Abel Rodriguez ◽  
Tatiana Xifara

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