Methodology of classification, forecast and prediction of healthcare providers accredited in high quality in Colombia

Author(s):  
Tomás Fontalvo Herrera ◽  
Enrique Delahoz Dominguez ◽  
Orianna Fontalvo
Author(s):  
Ningrong Lei ◽  
Murtadha Kareem ◽  
Seung Ki Moon ◽  
Edward J. Ciaccio ◽  
U Rajendra Acharya ◽  
...  

In this paper, we discuss hybrid decision support to monitor atrial fibrillation for stroke prevention. Hybrid decision support takes the form of human experts and machine algorithms working cooperatively on a diagnosis. The link to stroke prevention comes from the fact that patients with Atrial Fibrillation (AF) have a fivefold increased stroke risk. Early diagnosis, which leads to adequate AF treatment, can decrease the stroke risk by 66% and thereby prevent stroke. The monitoring service is based on Heart Rate (HR) measurements. The resulting signals are communicated and stored with Internet of Things (IoT) technology. A Deep Learning (DL) algorithm automatically estimates the AF probability. Based on this technology, we can offer four distinct services to healthcare providers: (1) universal access to patient data; (2) automated AF detection and alarm; (3) physician support; and (4) feedback channels. These four services create an environment where physicians can work symbiotically with machine algorithms to establish and communicate a high quality AF diagnosis.


Author(s):  
Yifeng Shen

Thanks to the rapid development in the field of information technology, healthcare providers rely more and more on information systems to deliver professional and administrative services. There are high demands for those information systems that provide timely and accurate patient medical information. High-quality healthcare services depend on the ability of the healthcare provider to readily access the information such as a patient’s test results and treatment notes. Failure to access this information may delay diagnosis, resulting in improper treatment and rising costs (Rind et al., 1997).


2021 ◽  
Vol 20 (1) ◽  
Author(s):  
Jeremy Y. Ng ◽  
Saad Ahmed ◽  
Catherine Jiayi Zhang

Abstract Background Given the high prevalence of dietary and herbal supplement (DHS) use in tandem with the growing ease of internet access, patients commonly search online for consumer health information about these products. One common reason for DHSs use includes weight loss. Healthcare providers need to be aware of the quality of online information about DHSs for weight loss so they can adequately counsel their patients and provide them with guidance surrounding the identification of high-quality information resources. This study aimed to assess the quality of online DHSs consumer health information for weight loss that a “typical” patient might access online. Methods Six search terms were used to generate the first 20 websites on the Google search engine in four countries: Australia, Canada, the United Kingdom, and the United States (n = 480 websites). After applying exclusion criteria, eligible websites were quality assessed using the DISCERN instrument. This tool is comprised of 16 questions, each evaluated on a 5-point scale. The averages and standard deviations for each DISCERN instrument item, in addition to overall summed scores between 15 and 75 were calculated. Results Across 87 eligible websites, the mean summed score was 44.80 (SD = 11.53), while the mean overall DISCERN score of each website was 2.72 (SD = 0.99). In general, websites detailed and achieved their specified aims and described treatment benefits. However, most websites failed to describe the impact of treatment on overall quality of life and the impact of a no treatment option. The highest-scoring websites were largely government or health portal websites, while the lowest-scoring websites were largely commercial in nature. Conclusion High variability in DISCERN instrument scores was found across all websites assessed. Healthcare providers should be aware of the fact that their patients may be accessing misinformation online surrounding the use of DHSs for weight loss. Therefore, it is important for healthcare providers to ensure that they are providing their patients with guidance on how to identify high-quality resources online, in order that safe, effective, and evidence-based decisions are made surrounding the use of DHSs for weight loss.


Author(s):  
Hemanth Kowdley Subrahmanyam

With increasing diagnosis of ankyloglossia, the need for uniformity in diagnostic criteria and treatment decisions like frenotomy or frenuloplasty has come to the fore. Involvement of multidisciplinary healthcare providers who use various non-standardised resources and tools in the assessment and decision making is debatable. Effects of ankyloglossia on breast feeding, speech and sleep are discussed in this article following review of available high quality evidence based literature.


2020 ◽  
Author(s):  
Emna CHERIF ◽  
Elisabeth MARTIN VERDIER ◽  
Corinne ROCHETTE

Abstract Background: Healthcare systems are facing many changes. Particularly, patients are more engaged in the care process. The medical perspective of the process is insufficient to provide patients with high quality care and service personalisation. This research presents an attempt to complete this medical perspective through an experiential perspective, especially for chronic diseases such as cancer. We investigated patients’ experiences and profiles to reach a deeper understanding of their needs and expectations when they confront the disease. The objectives of this research were to model the key stages underling the patient pathway and to identify the challenging touch points of the interactions between patients and healthcare providers. Bringing together findings of patient experience, pathway, and profiles would help all the stakeholders involved to develop better practices for the healthcare process. Methods: A qualitative observational nethnography on a French specialized forum for breast cancer patients “ les Impatientes” was conducted. A total of 967 reviews were collected over a complete year period from all over France. Thematic and lexicometric content analysis were performed according to the experience dimensions, the pathway stages and touch points, as well as the patients’ profiles. Results: Data analysis shows that the healthcare pathway experienced by the patients is built around three stages. The discovery stage is closely related to the emotional dimension regarding the patient and physician relationship. The examination stage is characterized by a more technical and informational needs for the types of treatments. The follow-up and survivorship stage illustrates the patients’ need to assess the treatments’ effectiveness and the quality of the follow-up. Moreover, three profiles of patients were identified. The newcomers, the altruists and the autonomous are characterized by different attitudes depending on the stage of the healthcare pathway they were living. Conclusions: Our research presents an original modelling of the patient pathway and profiles beyond the medical process. It gives practical tracks to improve the healthcare pathway. Patients expect healthcare providers to integrate and strengthen several challenging touch points in order to create satisfactory patient experiences and high quality service.


2019 ◽  
Vol 9 (2) ◽  
pp. 11-14 ◽  
Author(s):  
John Mikhaeil ◽  
Bryan Ng ◽  
Michael-Roy Durr ◽  
Sparsh Shah ◽  
Edmond Chiu

The Student-Run Clinic Association (SRCA) is a pan-Canadian effort to develop new student-run clinics and scale the operation of existing clinics. Student-run clinics utilize a multidisciplinary team of health professional students to provide accessible primary care services to vulnerable and marginalized populations under the supervision of qualified and licensed healthcare providers. The SRCA plays an integral role in building the infrastructure necessary for student-run clinics to be sustainable and scalable across the country. The outcome of our initiative is to enhance equitable, high-quality care to underserved populations in Canada, while simultaneously providing future healthcare providers with experience serving this population.


2021 ◽  
pp. 140-147
Author(s):  
Jessica Peck

A promising practice for educating anti-trafficking stakeholders in healthcare emerged through an innovative train-the-trainer programme from a National Association of Pediatric Nurse Practitioner’s initiative called the Alliance for Children in Trafficking (ACT). The purpose of this training is to provide effective, high-quality education development with wide dissemination and reach. The obstacles to in-person education due to COVID-19 resulted in a pivot to a virtual platform to continue the ACT Advocate programme. This paper considers the engagement of the nursing profession in operationalising the ACT Advocate programme as a way to lead advocacy and education efforts, using a public health approach, for effective responses to child trafficking.


2013 ◽  
Vol 37 (4) ◽  
pp. 547 ◽  
Author(s):  
Jaklina Michael ◽  
Tracy Aylen ◽  
Rajna Ogrin

Australia has a high number of people from culturally and linguistically diverse (CALD) backgrounds whose primary language is not English. CALD population groups have comparatively lower levels of education and health literacy, and poorer health outcomes compared with the Australian-born population. The delivery of consumer health information to people from CALD backgrounds usually includes the use of translated resources. Unfortunately, the quality of translated resources available on health issues is highly variable and may impact efforts to address the disparities in health outcomes. Currently applied guides to translation focus on accuracy and literalness of the translation; however, for health translations, conveying meaning and incorporating culturally relevant information is essential. Minimum standards for developing translated resources are needed to provide an indication of quality for end users, including healthcare providers, the client and carer. This paper describes the development of a Translation Standard, led by a community nursing organisation in collaboration and consultation with CALD community members and peak community organisations in Melbourne, Australia. The Translation Standard includes 10 components that have been identified as necessary to ensure a minimum standard of translation that is of high quality and caters to the health literacy levels of the target audience. What is known about the topic? There are many people from CALD backgrounds who have worse health outcomes than people who are Australian born. There is a gap in guidance to health professionals on how to develop high-quality translations of consumer health information that consider culture and health literacy. Higher-quality translations are needed to better inform CALD groups about their health. What does this paper add? The description of a new Translation Standard to guide the development of culturally relevant consumer health translations, considering the cultural needs and health literacy level of the target audience. What are the implications for practitioners? The Translation Standard provides assurance to practitioners that any translation that has followed this Standard is of high quality and increases the likelihood that the target audience will find the information relevant and understandable. The Translation Standard can assist consumers to make more informed choices and decisions about their health. Future translations would benefit by using such a guide.


Author(s):  
Waddaa Redha ◽  
Kirsten Hartwick ◽  
Neal Sikka

With the passage of the Affordable Care Act (ACA) in 2010, significant changes are occurring within the healthcare system. It is imperative that ways to both reduce cost and improve health are found. Since emergency medicine is often considered the gateway to the healthcare system, healthcare providers need to determine the best way to provide high quality care in the emergency department while also curbing costs. Mobile health, or mHealth, utilizes technology to increase the mobility of patients and their providers and provides a medium to transfer data and information efficiently. In emergency medicine, this technology can be applied in various treatments including wound care, stroke care, and prehospital care. In this article, the authors discuss the current uses of mHealth within emergency care and potential areas for future growth.


2021 ◽  
Author(s):  
Juan G. Diaz Ochoa ◽  
Faizan Mustafa

AbstractBackgroundCurrently, the healthcare sector strives to increase the quality of patient management and improve the economic performance of healthcare providers. The data contained in electronic health records (EHRs) offer the potential to discover relevant patterns that aim to relate diseases and therapies, and thus discover patterns that could help identify empirical medical guidelines that reflect best practices in the healthcare system. Based on this pattern identification, it is then possible to implement recommendation systems based on the idea that a higher volume of procedures is associated with high-quality models.MethodsAlthough there are several applications that use machine learning methods to identify these patterns, this identification is still a challenge, in part because these methods often ignore the basic structure of the population, considering the similarity of diagnoses and patient typology. To this end, we have developed graph methods that aim to cluster similar patients. In such models, patients are linked when the same or similar patterns can be observed for these patients, a concept that enables the construction of a network-like structure. This structure can then be analyzed with Graph Neural Networks (GNN) to identify relevant labels, in this case the appropriate medical procedures.ResultsWe report the construction of a patient Graph structure based on basic patient’s information like age and gender as well as the diagnoses and trained GNNs models to identify the corresponding patient’s therapies using a synthetic patient database. We compared our GNN models against different baseline models (using the SCIKIT-learn library of python) and compared the performance of the different model methods. We have found that GNNs are superior, with an average improvement of the f1 score of 6.48% respect to the baseline models. In addition, the GNNs are useful for performing additional clustering analyses that allow specific identification of specific therapeutic clusters related to a particular combination of diagnoses.ConclusionsWe found that GNNs are a promising way to model the distribution of diagnoses in a patient population and thus better model how similar patients can be identified based on the combination of morbidities and comorbidities. Nevertheless, network building is still challenging and prone to prejudice, as it depends on how ICD distribution affects the patient network embedding space. This network setup requires not only a high quality of the underlying diagnostic ecosystem, but also a good understanding of how to identify related patients by disease. For this reason, additional work is needed to improve and better standardize patient embedding in graph structures for future investigations and applications of services based on this technology, and therefore is not yet an interventional study.


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