| Literature DB >> 32283623 |
Shakir Karim1, Shahadat Uddin1, Tasadduq Imam2, Mohammad Ali Moni3.
Abstract
Effective and efficient delivery of healthcare services requires comprehensive collaboration and coordination between healthcare entities and their complex inter-reliant activities. This inter-relation and coordination lead to different networks among diverse healthcare stakeholders. It is important to understand the varied dynamics of these networks to measure the efficiency of healthcare delivery services. To date, however, a work that systematically reviews these networks outlined in different studies is missing. This article provides a comprehensive summary of studies that have focused on networks and administrative health data. By summarizing different aspects including research objectives, key research questions, adopted methods, strengths and weaknesses, this research provides insights into the inherently complex and interlinked networks present in healthcare services. The outcome of this research is important to healthcare management and may guide further research in this area.Entities:
Keywords: administrative health data; network method; network study
Year: 2020 PMID: 32283623 PMCID: PMC7177895 DOI: 10.3390/ijerph17072568
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Flowchart for the selection of articles that were reviewed in this study.
Figure 2The list and number of various types of network studies (based on administrative health data) that were reviewed in this study.
Figure 3Construction of different networks based on an abstract administrative health dataset for three patients: (a) treatment information by different stakeholders; and (b) corresponding different healthcare stakeholder networks. Here Pa stands for patient, Ph for physician, Org for organisation that provides healthcare to patients, Nu for nurse, Pha for pharmacist, PBS for pharmaceutical benefits scheme and ICD for international classification of diseases.
Explanation of major network methods and measures across different aspects.
| Aspects | Methods and Measures | Definition |
|---|---|---|
| Node level measure | Degree, closeness, betweenness, eigenvector and other similar measures | Degree centrality: It depicts the number of ties a node (or actor) has with other nodes in a network. It can be of two types (in-degree and out-degree) in a directed network [ |
| Network level measure | Network centralization, density, network diameter and other similar measures | Network centralization: The centralization of a network indicates how central its most central node is compared with how central other nodes within that network are [ |
| Edge level measure | Tie strength | Tie strength: It represents the strength of relation between a pair of actors in a network [ |
| Exponential random graph model | This model and its different variants | Exponential random graph model: It is a probabilistic model that can identify the building blocks of a given network with respect to different micro-level network substructures (e.g., dyad, triangle and 3-star) [ |
| Cohesive subgroup analysis | Clique, clan, n-clique, n-clan and other similar measures | Clique: A clique is a group of actors or nodes in a network that are directly connected with each other [ |
| Community analysis | Community detection | Community detection: It helps to identify a group of nodes in a network that are densely connected among themselves but sparsely connected with other nodes of that network [ |
| Dyad and triad census analysis | Dyad and triad census | A dyad is a subgraph comprising two nodes or actors, while a triad is a subgraph consisting of three actors. Both dyads and triads can be formed with or without any links between their member actors [ |
List of studies that focus on networks using administrative health data. This study considers only those study that used administrative health data to conduct a network study in a healthcare context. Network studies based on other health data (e.g., survey data) have been excluded.
| Network Type | Research Question(s) | Reference |
|---|---|---|
| Physician collaboration network (PCN) |
How does the microscale level structure among physicians affect hospitalization cost and emergency clinic readmission rate? | Uddin et al. [ |
|
What network attributes of PCN affect hospitalization expense and readmission rate? How does the PCN structure ease the effective delivery of healthcare services to patients? | Uddin et al. [ | |
|
How can a comprehensive connection being built among physicians when sharing patients correspond with their professional relationships? | Barnett et al. [ | |
|
What correspondence and connection exist between different healthcare collaboration and coordination networks? | Uddin et al. [ | |
|
How do the attributes of patient-sharing physician collaboration networks improve health results? | Uddin et al. [ | |
|
Do the expert networks among physicians shift crosswise over geographic areas? How do physician professional networks impact elements that are related to their associations? | Landon et al. [ | |
|
Can coordination between physicians reduce expenses of care and probability of hospitalization? | Pollack et al. [ | |
| Patient-centric care coordination network |
What effects do the progressions in structural places of actors have in a short interim and aggregated network? | Uddin et al. [ |
|
How do different attributes make a significant impact on hospitalization cost and hospital length of stay? How can a network capture coordination between patient-centric care services during patient hospitalization period? | Uddin [ | |
|
How does a social network-based research framework enhance collaborative performance under various healthcare settings? | Uddin and Hossain [ | |
|
Does patient-centred care network impact hospitalization cost? | Uddin and Hossain [ | |
|
How do patient-physician tie quality and patient sociodemographic factors influence the social structure of tasks and conveyance of financially savvy healthcare services? | Abbasi et al. [ | |
|
What characteristics of a patient-driven network produce effective clinical outcomes? | Uddin et al. [ | |
| Physician –nurse collaboration network |
How can physician–nurse collaboration scale be used to quantify the impression of joint practice among medical attendants and doctors? | Caricati et al. [ |
|
How does the physician–nurse collaborative relationship affect patients’ mortality and length of stay? | Tschannen and Kalisch [ | |
|
How do physician and nurse form collaboration network and what improvements can be achieved in terms of the nature of medical services from such networks? | Yao et al. [ | |
| Physician-pharmacist collaboration network |
How can collaboration between doctors and pharmacists improve management of chronic conditions? | DeMik et al. [ |
| Patient referral network |
How do small-scale and full-scale design of patient referrals under the US patient referral networks motivate future healthcare developments? What is the motivation of future healthcare developments? | An et al. [ |
|
Can network analysis find appropriate referral networks for healthcare organizations? | Vukmir et al. [ | |
|
What impacts various patient referral designs have on the potential spread of emergency clinics between various classes of medical organizations? | Donker et al. [ | |
| Disease network |
How network-based approach and clinical regulatory information can assist in building up a portrayal of chronic disease movement? | Khan et al. [ |
|
How accurately a disease prediction framework can predict the risk of chronic diseases? | Khan et al. [ | |
|
How can comorbidity patterns enhance the understanding of different risk factors for chronic diseases? | Khan et al. [ | |
|
How does the comorbidity of multiple chronic ailments lead to the progression of cardiovascular conditions? | Hossain and Uddin [ | |
| Polymedication network |
Is managerial information useful to recognize drug regimens from discrete data of medication dispenses? | Khan et al. [ |
|
How does a polymedication network help healthcare system administrators to assemble the maps of diagnostics and recommend drugs with regards to constant ailments and polypharmacy? | Zamora et al. [ | |
|
How can pharmacological mechanisms be investigated using a poly-dimensional network? | Liu et al. [ | |
|
What association between the attributes of patients and health service providers lead to the utilization of paediatric psychotropic polypharmacy? | Medhekar et al. [ | |
|
How should specialists review available data to understand patients and the relevant therapeutic practice? | Franchini et al. [ |
Characteristics (i.e., network methods followed and key findings) of the included network studies.
| Network Type | Reference | Network Methods/Measures Used | Key Findings |
|---|---|---|---|
| Physician collaboration network (PCN) | Uddin et al. [ | Exponential random graph model |
The network structure of PCN has an impact on different patient outcomes (e.g., healthcare expense and hospitalization readmission rate). |
| Uddin et al. [ | Network centralization |
The degree centrality and network density of PCNs impact hospitalization cost and readmission rate. | |
| Barnett et al. [ | Community detection |
A positive correlation has been found between the strength of professional relationship among physicians and the number of shared patients. This correlation is stronger for primary care physicians compared to medical or surgical specialists. | |
| Uddin et al. [ | Exponential random graph model |
Exponential random graph model can explore the collaborative endeavours of different healthcare stakeholders. | |
| Uddin et al. [ | Triad census, Clique and Clan |
The triad census and subgroup statistics of PCNs can predict hospitalization cost, hospital length of stay and readmission rate. | |
| Landon et al. [ | Network centrality |
The collaboration pattern among physicians varies across geographic areas. Physicians who have characteristics in common tend to share patients among themselves. | |
| Patient-centric care coordination network | Uddin et al. [ | Closeness centrality |
A model is introduced for investigating the impact of network position of patients, physicians and clinic actors on healthcare outcomes in a patient-driven care network. |
| Uddin [ | Community detection |
The number of physicians engaged in delivering healthcare services to patients has a positive association with hospitalisation cost. Patient age, gender and comorbidity score moderated this association. The community structure and network density of physicians’ joint efforts can explain the varied healthcare outcomes across different hospitals. | |
| Uddin and Hossain [ | Dyad and Network centrality |
Social network attributes of network centrality, connectedness and tie strength are correlated with the coordination performance of patient-centric care networks. This relation is moderated by patient age, patient sex and hospital type. | |
| Uddin and Hossain [ | Connectedness, Degree centrality and Tie strength |
Network positions of patients, physicians and hospital actors have an impact on hospitalization expense. | |
| Abbasi et al. [ | Network centrality |
Network centrality measures of a patient-centric network can explore the operation and delivery of cost-effective healthcare services. | |
| Uddin et al. [ | Network centrality and Exponential random graph model |
By extracting and analysing networks among various healthcare stakeholders, this study proposed policies for cost-effective healthcare environments. | |
| Physician–nurse collaboration network | Caricati et al. [ | Community detection |
Physicians valued collaborative practices more than nurses. Also, collaborative practices were acknowledged to a lesser extent in contexts with higher standardization and automation (e.g., in critical care units). |
| Tschannen and Kalisch [ | Network centrality |
Physician–nurse collaboration is positively linked with the actual length of stay. A care from a physician–nurse collaboration may lead to a longer length of stay but very effective for the treatment of different complications. | |
| Yao et al. [ | Network centrality |
This study associated network measures with specific healthcare team behaviours. It also identified interventions for improving the design of healthcare teams and the training of healthcare professionals towards an enhanced quality of patient care. | |
| Physician–pharmacist collaboration network | DeMik et al. [ | Community detection |
A correlation is present between existing clinical pharmacy services and provider attitudes and beliefs in regard to implementing a novel pharmaceutical intervention. |
| Patient referral network | An et al. [ | Network centrality and Triad census |
Through a better understanding of network features, patient referral networks can provide insights for developing the US healthcare system. |
| Vukmir et al. [ | Community detection |
Patients often show low compliance with follow-up recommendations, even being directed by the emergency department patient referral system. | |
| Donker et al. [ | Degree centrality and Community detection |
This study predicts that (a) it is very likely that hospital-acquired infections will rapidly spread from one hospital to other hospital(s); and (b) For such spreads, hospitals that are being referred must be ready for a rapid response. | |
| Disease network | Khan et al. [ | Network centrality |
The understanding of the comorbid conditions that lead to diabetes can effectively be used for developing better health policy and resource management. |
| Khan et al. [ | Network centrality |
Chronic disease network is a novel approach to deal with the danger of type 2 diabetes. Such networks offer a methodology that can be utilized by private healthcare organizations and Governments for an improved and viable use of administrative health data. | |
| Khan et al. [ | Network centrality |
The mapping of diagnostic codes and their co-appearances helps in constructing comorbidity networks and, thereby, aids in understanding the progression pattern of chronic diseases at a population level. Targeted preventive health management programs can be planned and designed to reduce hospital admissions and associated cost. | |
| Hossain and Uddin [ | Network centrality |
Occurrence of blood and kidney diseases is related to cardiovascular diseases for type 2 diabetic patients. | |
| Polymedication network | Khan et al. [ | Network centrality |
A complex relationship among various drugs can capture the multimorbidity nature of different targeted treatments. The polymedication regimens that are expanded over a long time can be used for the treatment of chronic conditions (e.g., diabetes and asthma). |
| Zamora et al. [ | Betweenness centrality and Community detection |
Chronic, polymedicated patients require special attention because of the prevalence of high treatment cost and the associated risks. There are identifiable patterns between joint diagnostics and associated drugs. | |
| Liu et al. [ | Network centrality |
Pharmacological mechanism of baicalein is influenced by varied medical factors. | |
| Medhekar et al. [ | Community detection |
“Pediatric psychotropic polypharmacy” is necessary and its prescription by providers is well justified. | |
| Franchini et al. [ | Network density |
Network analysis can assist identifying complex associations between large scale patient information that can otherwise remain undetected. The study identified crucial factors that need to be considered for the development of clinical guidelines. |
Figure 4Frequency of different network measures and methods that were used by the 29 articles considered in this study. Some of these articles employed network measures and methods from more than one category.
The strength and weakness of different types of network.
| Network Type | Strength | Weakness |
|---|---|---|
| Physician collaboration network |
It can capture longitudinal collaborative network structures developed among physicians while providing treatment to patients. Able to quantify the networked role of each physician, which will eventually ease in developing better healthcare policy. |
It cannot capture the information regarding whether physicians discuss the concerned patient in person, or they develop a common understanding of the patient’s medical condition through medical prescriptions, clinical reports and diagnostic outcomes. |
| Patient-centric care coordination network |
It can capture the network connectivity among different healthcare agencies (e.g., hospital and rehabilitation) that are engaged in providing treatment to patients. It can identify the number of health services provided by each healthcare agency engaged in providing treatments. |
Since this is an ego-centric network (patients are at the center of the network), some network analysis approaches (e.g., betweenness centrality) cannot be applied in exploring such networks. |
| Physician–nurse collaboration network |
It can provide special healthcare to high risk patients, which is essential for eliminating errors and promoting high quality. It can leverage existing knowledge sources to assess contrasts and similarities between physicians and nurses. |
It cannot explain the different dimensions of collaborative practice that evolve between nurses and physicians. It is unable to recognize the real degree of a joint effort. |
| Physician–pharmacist collaboration network |
It can strengthen healthcare results and improve the comprehension of physician–pharmacist relationship in a primary care setting. It eases collaboration among professionals working in different drug stores. |
This network does not incorporate many facilities with geographic, racial and financial assorted varieties, which is important for the execution of group-based management for different diseases. |
| Patient referral network |
It can capture the entire journey of a patient with geographical proximities during receiving treatments across different healthcare service providers. It can help in developing healthcare policies (e.g., developing new healthcare facilities in a new area), which will eventually reduce patients’ traveling distance in accessing different healthcare services. |
It cannot explain why patients travel variable distances for accessing healthcare services. It could be the case that a patient traveled a long distance to access a healthcare service from a provider although the patient can access the same service from another provider by traveling a much shorter distance. |
| Disease network |
It helps in understanding the progression different disease conditions and their comorbidities. It eases the prediction of disease risk without any clinical or pathological tests. It empowers healthcare providers in developing preventive health management projects to diminish clinical and other related expenses. |
It cannot conceptualize other significant covariates (e.g., smoking status, alcohol consumption and functional impartment) that might be related to exacerbation risk. It underestimates hospital-acquired complications in exploring disease progressions. It does not allow the accurate classification of medication errors that may cause clinical complications. |
| Polymedication network |
It can contribute in deciding the gathering of health variables and diagnostics that are generally pertinent in the population. It can characterize new pointers of population health that mirror the unpredictability of current situations. It can potentially identify the adverse effects of various drugs. |
It cannot combine the medication dispensed events enlisted in the pharmaceutical benefits scheme data and recognize drug regimens. |