Next Article in Journal
Pesticide Safety Awareness among Rural Farmers in Dadinkowa, Gombe State, Nigeria
Next Article in Special Issue
Diet Quality Influences the Occurrence of Food Aversions in Women Undergoing Adjuvant Chemotherapy for Breast Cancer
Previous Article in Journal
COVID-19—Infections and Immunization of Inmates in Penitentiary Institutions in Poland in 2021
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Inter-Regional Patients’ Migration for Hospital Orthopedic Intensive Rehabilitation: The Italian Experience

1
Post Graduate School of Public Health, University of Siena, 53100 Siena, Italy
2
Department of Molecular and Developmental Medicine, University of Siena, 53100 Siena, Italy
3
General Directorate for Health Planning, Ministry of Health, 01144 Rome, Italy
*
Author to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2022, 19(21), 13726; https://doi.org/10.3390/ijerph192113726
Submission received: 12 September 2022 / Revised: 18 October 2022 / Accepted: 19 October 2022 / Published: 22 October 2022
(This article belongs to the Special Issue The Importance and Impact of Health Research)

Abstract

:
Background: Following the introduction of administrative federalism in the Italian National Health Service, inter-regional patients’ mobility has become increasingly relevant because, in addition to being an indirect index of the quality of care, it has important economic and financial implications. This study aimed to evaluate the fulfillment of the need for hospital orthopedic intensive rehabilitation on site and care-seeking patients’ migration to other regions. Methods: From 2011 to 2019, the data of intensive orthopedic rehabilitation extracts from the Hospital Discharge Cards provided by Italian Ministry of Health were analyzed. We studied the hospital networks of every Italian region (catchment areas). The epidemiological flows of inter-regional mobility were analyzed with Gandy’s Nomogram, while the financial flows were analyzed through Attraction Absorption and Escape Production Indexes. Results: Gandy’s Nomogram showed that only Piedmont, Lombardy, A.P. of Trento, E. Romagna, Umbria and Abruzzo had good public hospital planning for intensive orthopedic rehabilitation, with a positive balance for all studied periods. Lombardy, E. Romagna, Piedmont, Veneto and Latium have absorbed approximately 70% of all financial flows (about EUR 60.5 million). Conclusions: Only six regions appear to be able to satisfy the care needs of their residents, with a positive epidemiological and financial balance for all studied periods.

1. Introduction

Willingness to travel from an area of residence to receive healthcare dates back centuries, and persists in modern times [1,2]. In fact, the growth in globalization, the development of new forms of political cooperation, technological evolution and refinement, and a growing international market for medical care are key factors for the rise in patients’ movement across international borders [3]. This is best exemplified in the European Union due to the Directive on cross-border migration, which has promoted the free movement of patients between member states [4,5,6]. In addition, the European Union actively supports its citizens, who seek cross-border healthcare, by providing information through brochures, fact sheets and specialized contact points [7]. This means that the study of this phenomenon has become common in several disciplines (public health, jurisprudence, economics, geography and sociology) [8,9]. Evidence of health mobility also exists within the member states such as Italy, the United Kingdom, Spain, Sweden, and Belgium [10,11,12]. In Italy, the National Health Services (NHS), established in 1978, states that Italian citizens, according to their needs (prevention, hospital, rehabilitation, etc.), are free to choose the provider and the place of care [13,14,15]. This right grew in importance at the beginning of the 1990s, when the process of regionalization (and managerialization) started, which has decentralized the NHS into 21 regional health care systems, creating a “quasi-market” model to improve the quality and efficiency of hospital services, with potential consequences on equal access [16,17,18]. In 2001, the health-care competencies switched from a national to a regional level, leading to regions becoming responsible for all the health-care needs of their residents [19]. Some regions, such as Lombardy, have encouraged this competitive system within the public sector and between public and accredited private hospitals. Alternatively, in other regions, such as E. Romagna, policymakers have favored cooperation and coordination among providers by centrally planning production capacity and promoting a strong integration between hospital- and district-level services [20]. Although the effects of competition on the quality of health services are still unclear [21,22,23,24], citizens’ decisions to choose a hospital outside their region burden regional budgets, with the risk of undermining their sustainability. In fact, regions that cannot provide a good quality of service will see their resources drained by payments made to other regions for the services used by their residents [25,26,27]. For these reasons, it is essential to analyze healthcare mobility since it is a fundamental tool for health policy and planning; it is an indirect indicator of perception of hospital quality (real/perceived) [28,29]. Patients’ mobility for hospital orthopedic intensive rehabilitation is a topic that has not yet been addressed in the literature. The aims of our study were: (i) to analyze how the Italian regions have pursued the fulfillment of needs for hospital orthopedic intensive rehabilitation hospital services on-site and inter-regional patients’ migration trends; (ii) and to assess the financial impact of this phenomenon on regional funds.

2. Materials and Methods

2.1. Data and Catchment Areas

Data were collected from the Hospital Discharge Cards (HDCs) database of the Italian Ministry of Health, from 2011 to 2019. We considered the hospitalization of Italian patients for intensive rehabilitation for the Major Diagnostic Category of Diseases of Musculoskeletal System and Connective Tissue (MDC 8). We excluded the hospitalization of patients residing in other states, and the admissions of Italian patients to a foreign hospital. In addition, the inter-regional mobility flows of every Italian region were analyzed from data of Residents (R), Attraction (A) and Escapes (E).

2.2. Gandy’s Nomogram and Vectorial Analysis

Gandy’s Nomogram (NdG) was used to process data of R, A and E for every Italian region. It graphically represents access to hospital services by residents and non-residents in the studied period [30,31]. It is a squared area with a side of 100 placed in a Cartesian plane:
-
The X value indicates Residents (R) out of Residents (R) plus the Attractions (A):
X = R/(R + A) × 100.
-
The Y value indicates Residents (R) out of Residents (R) plus the Escapes (E):
Y = R/(R + E) × 100.
From 100 to 0, along the X-axis, the attraction increases, while along the Y-axis the escape to other regions increases. The Cartesian plane can be divided into four squares by two lines parallel to the axis, which start at X = 0; Y = 50 and X = 50; Y = 0. The diagonal that starts from the O point (X = 0; Y = 0) and ends at the W point (X = 100; Y = 100) splits the plane into a lower section where the X value is larger than the Y value, in which there are more escapes than attraction, and an upper one with an opposite situation. The points on the diagonal have the same value either for escapes or attractions, which are null in the W point and maximum in the O point. The four quadrants describe different scenarios of escapes and attractions:
-
In the upper left quadrant, the number of attractions higher than both for resident admissions and escapes; the latter are lower than resident admissions (E < R < A). This condition is typical of “market oriented” regions, which can receive more funds since their hospitals admit more patients from other regions than patients from their own region. The point (X = 0, Y = 100) identifies the paradoxical condition in which there are no escapes and the regional hospital networks admit only patients from other regions.
-
The upper right quadrant is divided into two sections by a bisector. In the upper section (hemi-quadrant of quality), escapes are lower than attractions and resident admissions are higher than attractions (E < A < R). In the lower area, attractions are less than the escapes, but the residents admissions are higher than the escapes (A < E < R). In this quadrant, there are regions that satisfy (in a more or less appropriate way depending on their position) the healthcare needs of their residents.
-
The lower left quadrant is diagonally divided into two sections. In the upper area, the attractions are higher than escapes and resident admissions (R < E < A), while in the lower area, residents admissions are the lowest, and escapes are higher than attractions (R < A < E).
-
The lower right quadrant shows the regions in which resident admissions are lower than escapes and higher than attractions (A < R < E).
For every year and region, we calculated the values of the X and Y axes to identify a point. All points from 2011 to 2019 have been linked in order to obtain a vector [5,32]. For those regions whose trend followed the same direction over the years (monophasic trend), the resulting vector was provided by linking the first (2011) to the last (2019) point. For those regions whose trend followed the same direction until a given year, then continued following another direction (biphasic trend), two vectors were created by linking the first point (2011) to the point of the year of direction change (first vector), while the second linked the year of direction change to the last one (2019). For the regions with more than two trend changes, we used the same methodology by linking, starting from 2011, the various changes of direction up to 2019.

2.3. Financial Evaluation

From the fees established by the agreements between the national government and the regions for the compensation of inter-regional healthcare mobility [33], we calculated the financial balance (A–E) for each region from the following rates:
-
Daily rate for ordinary regime: €246.89; days over the cut-off value €143.13;
-
Rate per access in day hospital regime: €197.51; accesses over the cut-off value €118.51.
The cut-off values from 2011 to 2013 were set at 60 days, dropping to 40 days from 2014 to 2019.
To describe the financial mobility flows absorbed and generated by each region, we used the Attraction Absorption and Escape Production Indexes [29].
To indicate the percentage of euros gained by region Xi (with i = 1, …, 21), out of the total euros gained by all regions, we used the Attractions Absorption Index (AAI):
AAI Xi = A Xi/Tot. A × 100
where AAI Xi = Attractions Absorption Index of region Xi; A Xi = Gain of region Xi; Tot. A = Total gain of all regions.
To indicate the percentage of euros spent for their escape by region Xi (with i = 1, …, 21), out of the total euros spent for escapes by all regions, we used the Escape Production Index (EPI):
EPI Xi = E Xi/Tot. E × 100
where EPI Xi = escape Production Index of region Xi; E Xi = euro spent for escapes by region Xi; Tot. E = total euro spent for escape by all regions.

2.4. Cartograpic Map

To provide an immediate and graphical representation of the two indexes described, we used Quantum Gis software version 2.16.3 (Open Source Geospatial Foundation Project) [34] to generate cartographic maps. The stratification of colors was performed based on percentiles (≤10%; between 11% and 25%; between 26% and 50%; between 51% and 75%; between 76% and 90%; and ≥91%) [29]; thus, we obtained maps with six different color intensities.

2.5. Statistical Analysis

The Shapiro–Wilk test was used to evaluate the normality of distribution. The student’s t test was used to assess differences between two groups. Cuzick’s test was used for trend analysis. Spearman’s rank correlation was calculated between AAI and IPE. Tests were performed using STATA software SE/14.0 (StataCorp LLC, College Station, TX, USA) and were considered statistically significant at 95% (p < 0.05).
The Shapiro–Wilk test was used to evaluate the normality of distribution. The student’s t test was used to assess differences between two groups. Cuzick’s test was used for trend analysis. Spearman’s rank correlation was calculated between AAI and IPE. Tests were performed using STATA software SE/14.0 (StataCorp LLC, College Station, TX, USA) and were considered statistically significant at 95% (p < 0.05).

3. Results

Table 1 shows the admissions for ordinary regime (ORD), day hospital (DH) and the ORD/DH ratio, from 2011 to 2019, divided into residents and mobility, for hospital orthopedic intensive rehabilitation. In Italy, during the study period, hospitalizations (ORD + DH) increased from 140,048 to 151,562 admissions (p < 0.05). For the ORD regime, they increased both for residents and in mobility (p < 0.05), while they both decreased for DH (p < 0.05). As a result, ORD/DH ratios increased significantly (p < 0.05). The ORD/DH ratios varied significantly if the hospitalizations were provided to residents or in mobility (p < 0.05).
Figure 1 shows, for the hospital orthopedic intensive rehabilitation, the average length of stay (LOS) for ORD hospitalization and the number of accesses for each DH hospitalization, divided into residents and mobility, from 2011 to 2019. For the ORD regime, LOS decreased both for residents and for mobility admissions; for the latter, this decrease was significant (p < 0.05). For the DH regime, the number of accesses increased both for residents and for mobility admissions; for the former, this increase was significant (p < 0.05). The LOS for ORD and the number of accesses for DH were higher for residents than in mobility (p < 0.05).
Figure 2 shows the NdG of every Italian region for hospital orthopedic intensive rehabilitation from 2011 to 2019. For the studied time periods, all regions were in the upper right quadrant. However, only six regions (Piedmont, Lombardy, A.P. of Trento, E. Romagna, Umbria and Abruzzo) were in the hemi-quadrant of quality. Tuscany appears in the upper left quadrant and then under the bisector in the upper right quadrant. A.P. of Bolzano and Molise lost their positions. Aosta Valley had initially crossed the bisector and then returned to the starting hemi-quadrant. Attractions increased (p < 0.05) for Lombardy, A.P. of Trento, Veneto and Basilicata, while they decreased (p < 0.05) for A.P. of Bolzano, Veneto, F.V. Giulia, Abruzzo, Calabria, and Sicily. Escapes increased (p < 0.05) for Veneto, F.V. Giulia, E. Romagna, Tuscany, Molise, Puglia and Basilicata, while they decreased (p < 0.05) for Piedmont, Aosta Valley, A.P. of Trento, Umbria, Abruzzo and Sicily.
Figure 3 shows financial mobility balance (A–F) of all Italian regions, for hospital orthopedic intensive rehabilitation, from 2011 to 2019.
On average, the financial flows of mobility were EUR 86.7 ± 3.0 million. Only Piedmont, Lombardy, A.P. of Trento, E. Romagna, Umbria and Abruzzo had a positive balance for all studied periods. Aosta Valley, A.P. of Bolzano, Tuscany, Latium and Molise had positive balances for a few years. The other regions had constant negative balances. Only Lombardy (plus EUR 3.0 million) and A.P. of Trento (plus EUR 2.8 million) have increased their balance, and are already in surplus, significantly (p < 0.05). Veneto (minus EUR 2 million), F.V. Giulia (minus EUR 0.5 million), Molise (minus EUR 0.9 million) and Apulia (minus EUR 1.0 million) have worsened their negative balance (p < 0.05). E. Romagna (minus EUR 2.8 million) has decreased its earnings (p < 0.05). Calabria (plus EUR 0.8 million) and Sicily (plus EUR 1.6 million) tried to improve their negative balance (p < 0.05).
Figure 4 shows the mean value (2011–2019) of the Attraction Absorption Indexes (A single region/Tot. A all regions) of all Italian regions for hospital orthopedic intensive rehabilitation. The hospital networks (dark green) of Lombardy, E. Romagna, Piedmont, Veneto and Latium have absorbed almost 70% (about EUR 60.5 million per year) of all financial flows. The gains of Sardinia, F.V. Giulia, Calabria A.P. of Bolzano, Aosta Valley and Sicily (light green) appear very slight (in total, about EUR 1.5 million per year).
Figure 5 shows the mean value (2011–2019) of Escape Production Indexes (E single region/Tot. E all regions). Campania, Lombardy, Latium, Veneto and E. Romagna (dark red) have produced the largest financial outflows (in total, about EUR 39 million per year), while A.P. of Bolzano, Aosta Valley, A.P. of Trento, Molise, F.V. Giulia and Sardinia (light red) have produced the lowest (in total, about EUR 6 million per year).
Comparing Figure 4 and Figure 5, it can be seen that regions that have higher AAI Indexes also tend to have higher IPE Indexes (Spearman’s rho = 0.4896; p < 0.05), which is highlighted for the Northern regions (Spearman’s rho = 0.7667; p < 0.05).

4. Discussion

The topic of patients’ mobility is discussed at length both at the European level and in countries with regional healthcare systems [11]. At the Italian level, this phenomenon involves about 10% of hospital admissions. In our specific case (hospital intensive orthopedic rehabilitation), about 14% of patients moved to obtain healthcare, with a significantly increasing trend. Some healthcare mobility flows are due to the size of the catchment areas of high specializations, while others are due to the qualitative and quantitative insufficiency of the supply of care. This has an economic implication, including in the equity of the NHS. For the regions, there should be a priority to divide healthcare mobility for highly specialized care for low/medium complexity [27,29], to reduce the latter effect. Hospital orthopedic intensive rehabilitation falls within this category. Specifically, mapping flows by type of healthcare service is essential to identify the lack of supply so as to strengthen it in critical areas, guaranteeing equity of access to care and its quality [35]. The increase in orthopedic elective surgery and patients’ willingness to travel to receive this type of treatment is well known. The phenomenon of migration for hospital orthopedic intensive rehabilitation, resulting from acute hospitalization, has not yet been analyzed [36]. Because of this, the aim of our study was to analyze, from an epidemiological and financial point of view, the inter-regional mobility for hospital orthopedic intensive rehabilitation.
From 2011 to 2019, we found an increase in hospitalizations (+7.6%), both for residents and mobility, sustained only by admission in the ordinary regime (+10.6%). This may be due to the ever-increasing demand for orthopedic prosthesis surgeries, especially by older people [37,38], probably causing an increase in the ORD/DH ratio. In fact, according to the Italian rehabilitation guideline of the NHS, the DH is only provided when the patient’s clinical condition is stable, does not require 24 h nursing care and is able to tolerate daily home–hospital transfers [39]. Certainly, a patient’s mobility, regardless of clinical condition, will factor into the provision of the type of hospitalization, given the difference in ORD/DH ratios between residents and mobility patients. In fact, it is already known [40] that some hospitals, given their autonomy in patients’ admission, provide some care to patients from outside the area; in our case, an ORD admission instead of a DH was selected, to avoid daily transfers of the patient, which would be inconvenient for a patient coming from far away.
The rehabilitation guideline also recommends that the patient’s discharge and subsequent recourse to out-of-hospital care regimes should be performed when a condition of clinical stability is achieved, and highly complex diagnostic needs cease to exist [39]. In our case, the LOS for mobility admission decreased over the years and had a shorter duration compared to residents. Hospitals appear to have increased their efficiency in order to earn patients’ approval with their quick return home. This result contrasts with other studies [40,41,42], which show that patients who travel for care have a longer LOS. When patients must travel long distances, the criteria for discharge are likely to be stricter, resulting in more extended hospital stays. For example, there may be problems with travel time, pain control and the availability of medical facilities close to home [43].
For all studied periods, all regions were in the upper right quadrant of NdG, which indicates the ability to satisfy the care needs of their residents, as required by the NHS [44]. However, only Piedmont, Lombardy, A.P. of Trento, E. Romagna, Umbria and Abruzzo were in the upper “quality” part of the quadrant; these regions have a positive epidemiological balance (attraction is greater than escape). Tuscany, in 2018, seemed to have become increasingly attractive, outgrowing the hospitalization of its residents, but lost their position in 2019. Only A.P. of Trento has been able to reduce escapes and increase attractions at the same time, while Veneto and F.V. Giulia have decreased both their attractiveness and increased their escapes.
Hospital orthopedic intensive rehabilitation involves almost EUR 90 million, which is about 2% of all financial mobility flows [35]. In the studied period, and regions indicated in Gandy’s Nomogram, positive epidemiological balances also had positive financial balances. The case of Tuscany is interesting as the financial balances were negative in the first six years of the study unlike the epidemiological ones. The epidemiology, being the remuneration per day of hospitalization and not per single admission, masked the financial losses. Lombardy and A.P. of Trento have exploited this specialty to increase their gain. Veneto, F.V. Giulia, Molise and Apulia have worsened their already negative balances. E. Romagna decreased its already positive balances. Sicily and Calabria are trying to improve their financial situation. As found in another study [45], providers, to increase their income, might consider increasing their marketing for hospital orthopedic intensive rehabilitation.
According to AAI only five regions absorbed more than two-thirds of all financial mobility flows; Lombardy absorbed about one third, followed E. Romagna, Piedmont, Veneto and Latium. The regions producing the most outflows (EPI) were Campania, Lombardy, Latium, Veneto and E. Romagna.
In the north of Italy, regions with high income also had high expenditure. In the South, as observed in Campania, the picture is more heterogeneous, with regions absorbing little money but spending more. It is evident how the territorial dimension influences the phenomenon of the financial flows.
For regions with deficient balances, patients’ migration will have a doubly negative effect [29]. In addition to having to pay for their citizens’ hospitalization outside the region, if the escapes are due to a lack of quality, the regions will see their hospitals underused; however, they will still have to continue to fund them, according to the national laws. Moreover, if migration is due to a lack of supply, regions will still see some of the funds that could have been used to increase supply in their own territory drained away to other regions. These disparities, both in the lack of supply and its consequent equity of access and in the quality of care, may increase. For this reason, the central government should help regions redress healthcare inequalities [46].

Limitations

Our study has the following limitations: The study is affected by a time gap of about 2.5 years. The current condition may be different from the one described, either due to programmatic interventions of various kinds that may have partially influenced trends and comparisons and/or due to being influenced by the COVID-19 pandemic that may have limited the patient’s migration. Despite this, the data analyzed are the most recent, and it was possible to profile trends over several years. The data of Italian HDCs have a long latency time; we analyzed only the latter since we consider them the most reliable. Our study does not quantify proximity mobility (movements from areas near regional borders), which are not related to improvements in the supply of healthcare, but due proximity and ease of access to hospitals in other areas. The small size of some regions and corresponding low population sizes could have an impact on the allocation of resources in health services.

5. Conclusions

The Italian situation appears heterogeneous: only six regions (four in the North, one in the Center, and one in the South) appear to be able to satisfy the care needs of their residents, with attractions minus escapes resulting in a positive financial balance.
It should be a priority for regions, especially those with negative financial balances, to reduce outgoing healthcare mobility for services such as hospital orthopedic intensive rehabilitation; outgoing healthcare mobility leads to financial losses and could undermine the equity of access to care for citizens.
The present study is a starting point for further investigation since patients’ mobility for hospital orthopedic intensive rehabilitation is a topic that has yet to be addressed in the literature. Our results can support decision-makers (politicians and managers) in finalized decision-making processes aimed at improving the supply (qualitative and/or quantitative) for hospital orthopedic intensive rehabilitation, given both the growing demand and the increasing of patients’ migrations.

Author Contributions

Conceptualization, G.G. and N.N.; methodology, G.G. and G.M.; validation, G.G., G.M. and N.N.; formal analysis, G.G. and G.M.; investigation, G.G.; resources, S.C. and A.U.; data curation, S.C. and A.U.; writing—original draft preparation, G.G. and N.N.; writing—review and editing, G.G., G.M. and N.N.; visualization, G.G., G.M. and N.N.; supervision, G.M. and N.N.; project administration, A.U., S.C. and N.N. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data obtained from HDCs database—General Directorate for Health Planning of Italian Ministry of Health upon specific request.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Ricci, A.; Barzan, E.; Longo, F. How to identify the drivers of patient inter-regional mobility in beveridgean systems? Critical review and assessment matrix for policy design & managerial interventions. Health Serv. Manage. Res. 2021, 34, 258–268. [Google Scholar]
  2. Koylu, C.; Delil, S.; Guo, D.; Celik, R.N. Analysis of big patient mobility data for identifying medical regions, spatio-temporal characteristics and care demands of patients on the move. Int. J. Health. Georg. 2018, 17, 32. [Google Scholar] [CrossRef] [PubMed]
  3. Lunt, N.; Mannion, R. Patient mobility in the global marketplace. A multidisciplinary perspective. Int. J. Health Policy Manag. 2014, 2, 155–157. [Google Scholar] [CrossRef] [Green Version]
  4. Directive 2011/24/EU of European Parliament and of the Council 9 March 2011, on the application of patients’ rights in cross-border healthcare: Sess. Session 2011. Available online: https://eur-lex.europa.eu/LexUriServ/LexUriServ.do?uri=OJ:L:2011:088:0045:0065:en:PDF (accessed on 5 August 2022).
  5. Nante, N.; Messina, G.; Lispi, L.; Serafini, A.; Prisco, G.; Moirano, F. Patients, Mobility trends of patients across Italian Regions: Implications for planning and evaluation of hospital service. Ann. Ig. 2016, 28, 328–338. [Google Scholar] [PubMed]
  6. Glass, L.T.; Schlachta, C.M.; Hawel, J.D.; Elnahas, A.I.; Alkhamesi, N.A. Cross-border healthcare: A review and applicability to North America during COVID-19. Health Policy Open 2022, 3, 100064. [Google Scholar] [CrossRef] [PubMed]
  7. Beuken, J.A.; Bouwmans, M.E.; Verstegen, D.M.L.; Dolmans, D.H.J.M. Out of sight, out of mind? A qualitative study of patients’ perspectives on cross-border healthcare in a European border region. Patient Educ. Couns. 2021, 104, 2559–2564. [Google Scholar] [CrossRef] [PubMed]
  8. Yang, Y.; Wang, Y. Analysis of the charateristics of Cross-Regional Patient Group and Differences in Hospital Service Utilization in Beijin. Int. J. Environ. Res. Public Health 2022, 19, 3227. [Google Scholar] [CrossRef] [PubMed]
  9. Diesenreiter, C.; Österle, A. Patients as EU citizens? The implementation and corporatist stakeholders’ perceptions of the EU cross-border health care directive in Austria. Health Policy 2021, 125, 1498–1505. [Google Scholar] [CrossRef]
  10. Blàsquez-Fernàndez, C.; Cantarero-Prieto, D.; Pascual-Sàez, M. Patient cross-border mobility: New findings and implications in Spanish regions. Econ. Sociol. 2017, 10, 11–21. [Google Scholar] [CrossRef] [Green Version]
  11. Brekke, K.R.; Levaggi, R.; Siciliani, L.; Straume, O.R. Patient mobility and health care quality when regions and patients differ in income. J. Health Econ. 2016, 50, 372–387. [Google Scholar] [CrossRef] [Green Version]
  12. Glinos, I.A.; Boffin, N.; Baeten, R. Contracting Cross-Border Care in Belgian Hospitals: An Analysis of Belgian, Dutch and English Stakeholder Perspectives; Report for the Project “Europe for Patients”; Observatoire Social Européen: Brussels, Belgium, August 2005; Available online: http://141.94.22.255/ose_static/files/publication/2005/baeten_glinos_2005_BelgianCaseStudy.pdf (accessed on 10 August 2022).
  13. Calabrò, R.S.; Manuli, A.; De Cola, M.C.; Bramanti, P. Innovation technology in neurorehabilitation: Introducing a hub and spoke model to avoid patient “migration” in Sicily. J. Health Organ. Manag. 2020, 34, 207–214. [Google Scholar] [CrossRef]
  14. Bruzzi, S.; Ivaldi, E.; Santagata, M. Measuring Regional Performance in the Italian NHS: Are Disparities Decreasing? Soc. Indic. Res. 2022, 159, 1057–1084. [Google Scholar] [CrossRef] [PubMed]
  15. Fattore, G. Traveling for care. Inter-regional mobility for aortic valve substitution in Italy. Health Policy 2014, 117, 90–97. [Google Scholar] [CrossRef]
  16. Brenna, E. Quasi-market and cost-containment in Beveridge system: The Lombardy model of Italy. Health Policy 2011, 103, 209–218. [Google Scholar] [CrossRef]
  17. Messina, G.; Forni, S.; Collini, F.; Quercioli, C.; Nante, N. Patient mobility for cardiac problems: A risk-adjusted analysis in Italy. BMC Health Serv. Res. 2013, 13, 56. [Google Scholar] [CrossRef] [Green Version]
  18. Exworthy, M.; Peckham, S. Acces, choice and travel: Implications for health policy. Soc. Policy Adm. 2006, 40, 267–287. [Google Scholar] [CrossRef]
  19. Brenna, E.; Spandonaro, F. Regional incentives and patient cross-border mobility: Evidence from the Italian experience. Int. J. Health Policy Manag. 2015, 4, 363–372. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  20. Lippi Bruni, M.; Ugolini, C.; Verzulli, R. Should I wait or should I go? Travelling versus waiting for better healthcare. Reg. Sci. Urban Econ. 2021, 89, 103697. [Google Scholar] [CrossRef]
  21. Kessler, D.P.; McClellan, M.B. Is hospital competition socially wasteful? Q. J. Econ. 2000, 115, 577–615. [Google Scholar] [CrossRef]
  22. Cooper, Z.; Gibbons, S.; Jones, S.; McGuire, A. Does hospital competition save lives? Evidence from the English nhs patien choice reforms. Econ. J. 2011, 121, F228–F260. [Google Scholar] [CrossRef]
  23. Gowrisankaran, G.; Town, R.J. Competition, payers and Hospital Quality. Health Serv. Res. 2003, 38, 1403–1422. [Google Scholar] [CrossRef] [PubMed]
  24. Rubino, C.; Di Maria, C.; Abbruzzo, A.; Ferrante, M. Socio-economic inequality, interregional mobility and mortality among cancer patients: A mediation analysis approach. Socio-Econ. Plan. Sci. 2022, 82, 101247. [Google Scholar] [CrossRef]
  25. Lega, F.; Sargiacomo, M.; Ianni, L. The rise of governmentality in the Italian National Health System: Physiology or pathology of a decentralized and (ongoing) federalist system? Health. Serv. Manage. Res. 2010, 23, 172–180. [Google Scholar] [CrossRef] [PubMed]
  26. Levaggi, R.; Zanola, R. Patients’ migration across regions: The case of Italy. Appl. Econ. 2004, 36, 1751–1757. [Google Scholar] [CrossRef]
  27. Cantarero, D. Health care and patients’ migration across Spanish regions. Eur. J. Health Econ. 2006, 7, 114–116. [Google Scholar] [CrossRef]
  28. Pierini, E.; Pioppo, M.; Troiano, G.; Casucci, P.; Checconi, O.; Ruffini, F.; Messina, G.; Nante, N. Patient mobility for bone marrow transplant: The experience of the Perugia Hospital, years 2000–2013. Ann. Ig. 2015, 27, 769–776. [Google Scholar]
  29. Nante, N.; Guarducci, G.; Lorenzini, C.; Messina, G.; Carle, F.; Carbone, S.; Urbani, A. Inter-Regional Hospital Patients’ Mobility in Italy. Healthcare 2021, 9, 1182. [Google Scholar] [CrossRef]
  30. Gandy, R.J. A graphical representation of the inter-relationship between districts. Hosp. Health Serv. Rev. 1979, 75, 50–51. [Google Scholar]
  31. Gandy, R.; Franci, A.; Gurrieri, C.; McClelland, R. Demonstrating Access to Public Services Diagrammatically. Int. J. Public Adm. 2011, 34, 516–527. [Google Scholar] [CrossRef]
  32. Griffiths, I.W. Principles of Biomechanics & Motion Analysis; Lippincott Williams & Wilkins: Philadelphia, PA, USA, 2006. [Google Scholar]
  33. Conferenza Permanente per i Rapporti tra lo Stato le Regioni e le Province Autonome di Trento e Bolzano. Accordo Interregionale per la Compensazione Della Mobilità Sanitaria 2011–2019. Available online: https://salute.regione.emilia-romagna.it/siseps/mobilita-sanitaria/mob-inter/documentazione (accessed on 23 May 2022).
  34. Quantum GIS Development Team. Quantum GIS Geographic Information System. Open Source Geospatial Foundation Project. 2015. Available online: http://qgis.osgeo.org (accessed on 2 August 2022).
  35. Report Osservatorio GIMBE, n. 6/2019. La Mobilità Sanitaria Interregionale Nel 2017; Fondazione GIMBE: Bologna, Italy, 2019; Available online: www.gimbe.org/osservatorio/Report_Osservatorio_GIMBE_2019.06_Mobilita_sanitaria_2017 (accessed on 5 March 2021).
  36. Glinos, I.A.; Baeten, R.; Helble, M.; Maarse, H. A typology of cross-border patient mobility. Health Place 2010, 16, 1145–1155. [Google Scholar] [CrossRef]
  37. Ferguson, R.J.; Palmer, A.J.R.; Taylor, A.; Porter, M.L.; Malchau, H.; Glyn-Jones, S. Hip replacement. Lancet 2018, 392, 1662–1671. [Google Scholar] [CrossRef]
  38. Matharu, G.S.; Culliford, D.J.; Blom, A.W.; Judge, A. Projections for primary hip and knee replacement surgery up to the year 2060: An analysis based on data from The National Joint Registry for England, Wales, Northern Ireland and the Isle of Man. Ann. R. Coll. Surg. Engl. 2022, 104, 443–448. [Google Scholar] [CrossRef] [PubMed]
  39. Conferenza Permanente per i Rapporti tra lo Stato le Regioni e le Province Autonome di Trento e Bolzano. Linee Guida del Ministro Della Sanità per le Attività di Riabilitazione. Gazzetta Ufficiale Della Repubblica Italiana. 1998. Available online: https://www.gazzettaufficiale.it/eli/id/1998/05/30/098A4518/sg (accessed on 21 May 2022).
  40. Berta, P.; Guerriero, C.; Levaggi, R. Hospitals’ strategic behaviours and patient mobility: Evidence from Italy. Socio-Econ. Plan. Sci. 2021, 77, 101030. [Google Scholar] [CrossRef]
  41. Balia, S.; Brau, R.; Moro, D. Choice of hospital and long-distances: Evidence from Italy. Reg. Sci. Urban Econ. 2020, 81, 103502. [Google Scholar] [CrossRef]
  42. Balia, S.; Brau, R.; Marrocu, E. Interregional patient mobility in a decentralized healthcare system. Reg. Stud. 2018, 52, 388–402. [Google Scholar] [CrossRef]
  43. Jacksson, K.J.; Glasgow, M.C.; Mone, M.C.; Sheng, S.J.; Mulvihill, S.J.; Scaife, C.L. Does travel distance influence length of stay in elective pancreatic surgery? HPB 2014, 16, 543–549. [Google Scholar] [CrossRef] [Green Version]
  44. Guarducci, G.; Messina, G.; Urbani, A.; Carbone, S.; Nante, N. The Italian Patients’ Mobility as Hospital Policies Assessment. J. Qual. Health Care Econ. 2021, 4, 000249. [Google Scholar]
  45. Horsfall, D. Medical tourism from the UK to Poland: How the market masks migration. J. Ethn. Migr. Stud. 2019, 46, 4211–4229. [Google Scholar] [CrossRef]
  46. Neri, S. Interregional Patient Mobility in the Italian NHS: A Case of Badly-Managed Decentralization Comment on Regional Incentives and Patient Cross-Border Mobility: Evidence from the Italian Experience. Int. J. Health Policy Manag. 2015, 4, 857–859. [Google Scholar] [CrossRef]
Figure 1. Average values of LOS for ORD and for the number of accesses for DH, for hospital orthopedic intensive rehabilitation (residents and mobility), from 2011 to 2019.
Figure 1. Average values of LOS for ORD and for the number of accesses for DH, for hospital orthopedic intensive rehabilitation (residents and mobility), from 2011 to 2019.
Ijerph 19 13726 g001
Figure 2. Zoom of NdG for hospital orthopedic intensive rehabilitation, from 2011 to 2019.
Figure 2. Zoom of NdG for hospital orthopedic intensive rehabilitation, from 2011 to 2019.
Ijerph 19 13726 g002
Figure 3. Financial mobility balance (A–F) of Italian regions for hospital orthopedic intensive rehabilitation from 2011 to 2019.
Figure 3. Financial mobility balance (A–F) of Italian regions for hospital orthopedic intensive rehabilitation from 2011 to 2019.
Ijerph 19 13726 g003
Figure 4. Cartographic representation of Attraction Absorption Indexes (AAI) for hospital orthopedic intensive rehabilitation, mean from 2011 to 2019.
Figure 4. Cartographic representation of Attraction Absorption Indexes (AAI) for hospital orthopedic intensive rehabilitation, mean from 2011 to 2019.
Ijerph 19 13726 g004
Figure 5. Cartographic representation of Escape Production Indexes (EPI) for hospital orthopedic intensive rehabilitation, mean from 2011 to 2019.
Figure 5. Cartographic representation of Escape Production Indexes (EPI) for hospital orthopedic intensive rehabilitation, mean from 2011 to 2019.
Ijerph 19 13726 g005
Table 1. Patients’ admission to Italian hospitals for hospital orthopedic intensive rehabilitation, 2011–2019.
Table 1. Patients’ admission to Italian hospitals for hospital orthopedic intensive rehabilitation, 2011–2019.
YearResidentsMobilityTotalTotal (ORD + DH)
ORDDHORD/DHORDDHORD/DHORDDHORD/DH
2011113,013889212.7117,67446937.68130,687936113.96140,048
2012114,272791014.4518,09236949.03132,364827915.99140,643
2013117,758765515.3819,18832459.22136,946797917.16144,925
2014116,282734815.8219,20636852.19135,488771617.56143,204
2015118,243627118.8620,95534660.56139,198661721.04145,815
2016124,117611320.3022,10522996.53146,222634223.06152,564
2017122,317591720.6722,704195116.43145,021611223.73151,133
2018122,523538922.7422,730157144.78145,253554626.19150,799
2019124,428523923.7521,736159136.70146,164539827.08151,562
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Guarducci, G.; Messina, G.; Carbone, S.; Urbani, A.; Nante, N. Inter-Regional Patients’ Migration for Hospital Orthopedic Intensive Rehabilitation: The Italian Experience. Int. J. Environ. Res. Public Health 2022, 19, 13726. https://doi.org/10.3390/ijerph192113726

AMA Style

Guarducci G, Messina G, Carbone S, Urbani A, Nante N. Inter-Regional Patients’ Migration for Hospital Orthopedic Intensive Rehabilitation: The Italian Experience. International Journal of Environmental Research and Public Health. 2022; 19(21):13726. https://doi.org/10.3390/ijerph192113726

Chicago/Turabian Style

Guarducci, Giovanni, Gabriele Messina, Simona Carbone, Andrea Urbani, and Nicola Nante. 2022. "Inter-Regional Patients’ Migration for Hospital Orthopedic Intensive Rehabilitation: The Italian Experience" International Journal of Environmental Research and Public Health 19, no. 21: 13726. https://doi.org/10.3390/ijerph192113726

APA Style

Guarducci, G., Messina, G., Carbone, S., Urbani, A., & Nante, N. (2022). Inter-Regional Patients’ Migration for Hospital Orthopedic Intensive Rehabilitation: The Italian Experience. International Journal of Environmental Research and Public Health, 19(21), 13726. https://doi.org/10.3390/ijerph192113726

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop