Big Data in Healthcare and Social Sciences

Web Services ◽  
2019 ◽  
pp. 842-858
Author(s):  
Victoria López ◽  
Diego Urgelés ◽  
Óscar Sánchez ◽  
Gabriel Valverde

Healthcare providers and payers are increasingly turning to Big Data and analytics, to help them understand their patients and the context of their illnesses in more detail. Industry leaders are exploring/using Big Data to reduce costs, increase efficiency and improve patient care. The next future is an innovative approach to improving patient access using lean methods and predictive analytics. Social sciences are very much related to healthcare and both areas develop in a parallel way. In this article, we introduce one example of application: Bip4cast (a bipolar disorder CAD system). This paper shows how Bip4cast deals with different data sources to enrich the knowledge and improve predictive analysis.

Author(s):  
Victoria López ◽  
Diego Urgelés ◽  
Óscar Sánchez ◽  
Gabriel Valverde

Healthcare providers and payers are increasingly turning to Big Data and analytics, to help them understand their patients and the context of their illnesses in more detail. Industry leaders are exploring/using Big Data to reduce costs, increase efficiency and improve patient care. The next future is an innovative approach to improving patient access using lean methods and predictive analytics. Social sciences are very much related to healthcare and both areas develop in a parallel way. In this article, we introduce one example of application: Bip4cast (a bipolar disorder CAD system). This paper shows how Bip4cast deals with different data sources to enrich the knowledge and improve predictive analysis.


2021 ◽  
pp. 1753495X2110409
Author(s):  
Melanie Nana ◽  
Florence Tydeman ◽  
Georgie Bevan ◽  
Harriet Boulding ◽  
Kimberley Kavanagh ◽  
...  

Background Difficulty accessing medication and poor patient experience have been implicated as risk factors for termination of pregnancy and suicidal ideation in women with hyperemesis gravidarum. We aimed to gain further insight into these factors in order to further inform and improve patient care. Methods We performed a sub-analysis on quantitative data generated through a UK-wide survey of 5071 participants. A qualitative analysis of free text comments was performed using an inductive thematic approach. Results 41.2% % of women taking prescribed medications had to actively request them. ‘Extremely poor’ or ‘poor’ experiences were described in 39.4% and 30.0% of participants in primary and secondary care respectively. Protective factors for termination of pregnancy and suicidal ideation include holistic support from family, friends and healthcare providers. Conclusion Optimal care in hyperemesis gravidarum should incorporate timely access to pharmacotherapy, assessment of mental health, consideration of referral to specialist services and care being delivered in a compassionate manner.


2021 ◽  
pp. flgastro-2019-101239
Author(s):  
Jamie Catlow ◽  
Benjamin Bray ◽  
Eva Morris ◽  
Matt Rutter

Big data is defined as being large, varied or frequently updated, and usually generated from real-world interaction. With the unprecedented availability of big data, comes an obligation to maximise its potential for healthcare improvements in treatment effectiveness, disease prevention and healthcare delivery. We review the opportunities and challenges that big data brings to gastroenterology. We review its sources for healthcare improvement in gastroenterology, including electronic medical records, patient registries and patient-generated data. Big data can complement traditional research methods in hypothesis generation, supporting studies and disseminating findings; and in some cases holds distinct advantages where traditional trials are unfeasible. There is great potential power in patient-level linkage of datasets to help quantify inequalities, identify best practice and improve patient outcomes. We exemplify this with the UK colorectal cancer repository and the potential of linkage using the National Endoscopy Database, the inflammatory bowel disease registry and the National Health Service bowel cancer screening programme. Artificial intelligence and machine learning are increasingly being used to improve diagnostics in gastroenterology, with image analysis entering clinical practice, and the potential of machine learning to improve outcome prediction and diagnostics in other clinical areas. Big data brings issues with large sample sizes, real-world biases, data curation, keeping clinical context at analysis and General Data Protection Regulation compliance. There is a tension between our obligation to use data for the common good and protecting individual patient’s data. We emphasise the importance of engaging with our patients to enable them to understand their data usage as fully as they wish.


2017 ◽  
Vol 23 (1) ◽  
pp. 104-122 ◽  
Author(s):  
Guillermina Noël ◽  
Janet Joy ◽  
Carmen Dyck

Improving the quality of patient care, generally referred to as Quality Improvement (QI), is a constant mission of healthcare. Although QI initiatives take many forms, these typically involve collecting data to measure whether changes to procedures have been made as planned, and whether those changes have achieved the expected outcomes. In principle, such data are used to measure the success of a QI initiative and make further changes if needed. In practice, however, many QI data reports provide only limited insight into changes that could improve patient care. Redesigning standard approaches to QI data can help close the gap between current norms and the potential of QI data to improve patient care. This paper describes our study of QI data needs among healthcare providers and managers at Vancouver Coastal Health, a regional health system in Canada. We present an overview of challenges faced by healthcare providers around QI data collection and visualization, and illustrate the advantages and disadvantages of different visualizations. At present, user– centred and evidence–based design is practically unknown in healthcare QI, and thus offers an important new contribution.


2021 ◽  
pp. 186-193
Author(s):  
Meda Venkatasubbaiah ◽  
P Dwarakanadha Reddy ◽  
Suggala V Satyanarayana

Introduction: Lack of awareness about pharmacovigilance (PV) is one of the most important causes of under-reporting, which is widespread and poses a daunting challenge in India. The aim of this study is to assess and to document the knowledge, attitude, and practices (KAP) of Doctor of Pharmacy (Pharm.D) interns who practicing in hospitals with regards to PV and adverse drug reaction (ADR) reporting and to identify the causes of under reporting. Methods: This cross-sectional descriptive study was conducted for a period of six months across ten hospitals in Andhra Pradesh, India. Results: Overall, 578 responses were analysed, 78% of the participants had good knowledge on reporting ADR, 82% were aware that patient will be benefited from the ADR reporting, and the majority of the participants had a positive attitude towards reporting ADR. Fifty-nine percentage of the participants had reported the ADRs through different ADR reporting procedures, 52% were advised the awareness programmes for improving the reporting culture, and 34% had the difficulty in deciding or diagnosing the ADR. Conclusion: The KAP of the Pharm.D interns is appreciable and may reduce the burden on the other healthcare providers and improve patient care.


Web Services ◽  
2019 ◽  
pp. 933-952
Author(s):  
Ritesh Anilkumar Gangwal ◽  
Ratnadeep R. Deshmukh ◽  
M. Emmanuel

Big data as the name would refer to a subsequently large quantity of data which is being processed. With the advent of social media the data presently available is text, images, audio video. In order to process this data belonging to variety of format led to the concept of Big Data processing. To overcome these challenges of data, big data techniques evolved. Various tools are available for the big data naming MAP Reduce, etc. But to get the taste of Cloud based tool we would be working with the Microsoft Azure. Microsoft Azure is an integrated environment for the Big data analytics along with the SaaS Cloud platform. For the purpose of experiment, the Prostate cancer data is used to perform the predictive analysis for the Cancer growth in the gland. An experiment depending on the segmentation results of Prostate MRI scans is used for the predictive analytics using the SVM. Performance analysis with the ROC, Accuracy and Confusion matrix gives the resultant analysis with the visual artifacts. With the trained model, the proposed experiment can statistically predict the cancer growth.


Author(s):  
Ritesh Anilkumar Gangwal ◽  
Ratnadeep R. Deshmukh ◽  
M. Emmanuel

Big data as the name would refer to a subsequently large quantity of data which is being processed. With the advent of social media the data presently available is text, images, audio video. In order to process this data belonging to variety of format led to the concept of Big Data processing. To overcome these challenges of data, big data techniques evolved. Various tools are available for the big data naming MAP Reduce, etc. But to get the taste of Cloud based tool we would be working with the Microsoft Azure. Microsoft Azure is an integrated environment for the Big data analytics along with the SaaS Cloud platform. For the purpose of experiment, the Prostate cancer data is used to perform the predictive analysis for the Cancer growth in the gland. An experiment depending on the segmentation results of Prostate MRI scans is used for the predictive analytics using the SVM. Performance analysis with the ROC, Accuracy and Confusion matrix gives the resultant analysis with the visual artifacts. With the trained model, the proposed experiment can statistically predict the cancer growth.


2017 ◽  
Vol 14 (3) ◽  
Author(s):  
Ron R Bowles ◽  
Catherina Van Beek ◽  
Gregory S Anderson

IntroductionThis article presents a framework for describing four dimensions of paramedic practice: Practitioners, Practice Setting, Care and Patient Disposition. The framework emerged from a qualitative study conducted to identify potential research directions and opportunities to advance paramedicine and paramedic education at Justice Institute of British Columbia in Canada. MethodsResearchers conducted semi-structured interviews with 17 stakeholders in Canadian paramedicine to explore the current state and emerging expectations of paramedic practice and paramedic education. ResultsThe study found no consensus, and little agreement, on what term or terms best describe the profession. Participants agreed that the core of paramedic practice involves an advanced care paramedic responding by ambulance to the patient’s side in an emergency to assess and treat urgent medical and traumatic conditions, then transport the patient to further medical care – most often an emergency physician at an emergency department. However, participants also described paramedics as healthcare providers who are increasingly taking on varied operational roles to improve patient care and address gaps in an evolving and stressed healthcare system. Four dimensions emerged for describing key characteristics of paramedic practice: the Practitioners, Practice Settings, Care and Patient Disposition. DiscussionThe framework described in this article may be useful for examining and better understanding both traditional and evolving paramedic roles. This, in turn, informs the efforts of paramedic educators, regulators, employers, and professional associations to support practitioners in the field. The article uses the framework to contrast two distinctly different community paramedic programs.


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