Skip to main content

Prevalence and clinical characteristics of patients with Advanced Chronic Illness and Palliative Care needs, identified with the NECPAL CCOMS-ICO© Tool at a Tertiary Care Hospital

Abstract

Background

The identification of patients with advanced chronic conditions and palliative care needs is essential since their care represents one of the main challenges for public health systems. The study aimed to determine the prevalence and characteristics of inpatients with palliative care needs in different services of a tertiary care hospital using the NECPAL CCOMS-ICO© tool.

Methods

A descriptive, cross-sectional cohort study was conducted in a tertiary hospital.

The NECPAL tool identifies patients who require palliative care. Any patient with the Surprise Question with the answer “NO” and at least another question of the tool with a positive answer is considered a positive identification.

Patients were classified as Non-NECPAL, NECPAL I-II, and NECPAL III, depending on the NECPAL tool criteria they met. The presence of physical symptoms, emotional distress, and social risk factors was assessed.

Results

Of the 602 inpatients, 236 (39.2%) were enrolled. Of them, 34 (14.4%) non-NECPAL, 202 (85.6%) NECPAL+ [105 (44.5%) NECPAL I-II, and 97 (41.1%) NECPAL III]. Physical symptom burden was high (pain intensity ≥ 1 in 68.3% of patients; tiredness ≥ 1 in 83.5%; somnolence ≥ 1 in 50.6%; dyspnea ≥ 1 in 37.9%; anorexia ≥ 1 in 59.5%). 64.1% had emotional distress, and 83.6% had social risk factors. The NECPAL-III group contained a higher percentage of cancer patients, higher demand for palliative care, and greater need for palliative care (p < 0.001). In 50.8% of cases, no referrals were made to psychology, social work, or hospital palliative and supportive care teams. The three services with the higher number of patients with palliative care needs were: Palliative Care Unit (100%), Oncology (54.54%), and Emergency Short-stay Unit (54.16%).

Conclusion

A high percentage of patients admitted to tertiary care hospitals presented palliative care needs, with multiple unmet physical, emotional, and social needs. Less than 50% are referred to specialized care teams, such as hospital palliative and supportive care teams.

Peer Review reports

Background

Currently, care for patients with advanced chronic conditions represents one of the main challenges for public health systems. Identifying patients with palliative care needs is fundamental with relative independence of prognosis and level of complexity. This identification might determine the need to introduce a palliative approach regardless of the service or the patient’s setting.

Many patients experience a physical and nutritional decline during their illness, with an emotional, social, and spiritual impact and frequent needs and demands crises. Additionally, these illnesses can lead to ethical dilemmas for healthcare professionals regarding the heavy use of resources and considerable suffering for patients and family members [1]. Such patients can receive care in most health service settings, including acute care hospitals [2], intermediate care facilities, emergency services, community [3], and nursing homes. In patients with advanced chronic illnesses, 69-82% will require palliative care before death [4].

Inpatients tend to present numerous burdensome symptoms that are difficult to manage as far as acute care hospitals are concerned. As the disease progresses, hospital admissions increase regardless of where patients die. In Spain, 52% of patients with non-sudden deaths are admitted at least once in the last three months of life [5].

To better care for patients with palliative care needs, there must be a consensus among all health services to identify hospitalized patients with an advanced stage of their diseases. As there is no clear definition, this identification becomes a challenge, and most remain at the hospital without receiving this special care [6, 7]. Therefore, the lack of understanding of when a patient requires palliative care [8] can lead to delays. Thus, suffering for patients and their environment [7, 9].

In recent years there have been innovations in palliative care. One of the “Conceptual Innovations” has been the consideration that patients should not only be treated at the final stages of their disease but before. For this reason, the concepts of “First Transition” and “Second Transition” palliative care have been developed [10].

Several initiatives have been developed to create tools to identify patients with palliative care needs. For example, the Gold Standards Framework [11] in England, the SPICT in Scotland, and a similar tool in Spain, the “NECPAL (NECesidades PALiativas, palliative care needs) tool” (from now on, NECPAL), were created. The Gold Standards Framework - Proactive Identification Guidance (GSF-PIG) has been used to determine the prevalence of patients with palliative care needs in hospital settings in other countries, with reports ranging from 20 to 36% of inpatients [12,13,14,15]. Currently, the GSF-PIG is used in the UK to identify such patients in the hospital[16].

The NECPAL is a validated tool used in primary care to identify advanced chronic patients with palliative care needs that can be used in any area of the health system. It introduces improvements in the quality of palliative care in all services. This instrument assessed the prevalence of individuals with palliative care needs in the general population (1.5%) [3]. It has also been employed as part of a population study in a secondary hospital [3]. However, NECPAL has not been used in an entirely tertiary care hospital. Thus, the prevalence and clinical characteristics of NECPAL + patients in tertiary hospitals are unknown.

The study’s primary aim was to identify advanced chronic patients with palliative care needs (NECPAL+) in tertiary hospital services through the NECPAL tool. A secondary objective was to determine their symptoms and whether there were significant differences in the clinical characteristics of patients depending on the number of criteria met with the NECPAL tool. Based on the number of criteria, patients could be classified with different degrees of severity.

Materials and methods

Study design

It was a descriptive, cross-sectional cohort study conducted in two public hospitals, the Bellvitge University Hospital (HUB), with 759 beds, which is a tertiary hospital covering a population area of more than 2 million inhabitants, and the Duran i Reynals Hospital (DIR), with 97 beds, the associated HUB cancer center. All the hospital areas were assessed except Emergency departments and other services without hospital beds.

A cross-sectional cut was performed at each hospital department with a different cut-off date. Before the fieldwork, each service head of the included services and the corresponding nursing supervisors were invited to participate in the study. Individual meetings were held with each service to explain it, offer clarifications, and determine the date for the cross-sectional data collection.

The study was conducted following the principles outlined in the revised version of the Declaration of Helsinki and Good Clinical Practices (GCPs) and was approved by the Bellvitge University Hospital Ethics Committee (Reference PR069/12). Signed informed consent was obtained from all patients who answered the questionnaires.

Patient recruitment and data sources

The inclusion criteria for the study were individuals ≥ 18 years of age with a minimum hospital admission of 24 h and with any of the eight selected chronic illnesses (cancer, chronic obstructive pulmonary disease, chronic heart disease, chronic neurological disease (either vascular or degenerative), serious chronic liver disease, serious chronic renal disease, dementia, and advanced frailty), as well as any other advanced conditions.

The inclusion process was done as follows: (1) The inpatients of the cross-sectional day were obtained through a computerized list, and the clinical and demographic data were obtained from their respective medical records. (2) The doctor and nurse responsible for each patient determined which patients were particularly affected by their chronic disease. This condition was noted as the “main diagnosis.” The data manager of the Research Unit collected the variables in a Clinical Research Document (CRD) from the medical records, except for those who needed patients’ answers. The responsible physician or nurse was consulted if data were incomplete or unclear in the medical records. (3) Patients enrolled were invited to answer scales: Edmonton Symptom Assessment Scale (ESAS) and Detection of Emotional Distress (DED), and information related to social risk factors -see variables.

The study sample size was achieved when all services were included.

Variables analyzed

After patient enrollment, the NECPAL CCOMS-ICO© tool was administered [3]. This tool includes a multifactorial, non-dichotomous assessment process that combines the Surprise Question (SQ) “Would you be surprised if this patient died in the next year?” with the presence of 3 groups of criteria or variables: (Point 2) choice/request or need of palliative care approach; (Point 3) general clinical indicators of severity and progression, including comorbidity and resource use; and (Point 4) specific clinical indications of severity and progression per diseases. Patients considered positive for NECPAL are SQ + patients who also fulfill at least one of the other three tool criteria.

Furthermore, this allows patients to be classified into four categories: (1) Non-NECPAL, when the patient did not meet any of the tool’s criteria; (2) SQ+, when doctors or nurses would not be surprised if this patient died in the next year; (3) NECPAL I-II, when the patient was NECPAL + and met a maximum of two additional criteria; (4) NECPAL III, when the patient was NECPAL + and met three or more of the NECPAL tool criteria.

For all patients included, the variables assessed in addition to NECPAL criteria were: age; sex; main diagnosis; functional status; the presence of cognitive decline with the Pfeiffer test [17]; the presence of comorbidity with the Charlson index [18]; the presence of social risk factors [19]; pharmacological treatments, especially the use of analgesics; previous hospital admissions; and interdepartmental consultations (psychology, social work, or hospital palliative and supportive care).

Patients who agreed with it completed the ESAS scale [20] and the DED scale. The ESAS scale includes questions about symptoms, such as pain, tiredness, nausea, depression, insomnia, and perception of wellbeing. The DED scale assesses the presence of emotional distress. Before answering the ESAS and DED scales, all patients completed the Pfeiffer questionnaire [17], which assesses the presence of cognitive impairment. Those with cognitive impairment did not answer the ESAS and DED scales. If patients had cognitive impairment, relatives could answer questions related to social risk factors.

Statistical analysis

Quantitative variables were described as the mean and standard deviation (SD), whereas categorical variables were described as frequency and, or percentage. To compare quantitative variables, we used the Student t-test or ANOVAs when the variable had a normal distribution and the Kruskal-Wallis test for non-normal distributions.

Results

Patient characteristics

Twenty-seven departments were evaluated, with 602 inpatients, 366 (60.8%) did not meet inclusion criteria, and 236 (39.2%) were enrolled. The median age was 68.2 years (SD 14.72), and 143 (61%) were women. No significant differences were shown in gender between included and non-included patients. On the contrary, significant age differences were observed, with the mean age of the included patients being 68.20 years (SD 14.72) and of not included patients, 60.83 years (SD 15.72) (p = < 0.001). No significant differences in age and sex were found between the patients who signed the informed consent and those who did not: 67.96 years (SD 15.1) vs. 68.49 years (SD 14.32), and 75 men (58.59%) vs. 69 men (63.88%), respectively.

Prevalence results

Of the 602 patients admitted to the hospital, 236 (39.2%) were included in the study as affected by chronic conditions; 202 (33.55%) were NECPAL + [105 (17.44%) were NECPAL I-II, and 97 (16.11%) were NECPAL III]. Supplemental Table S1 shows the distribution of admitted patients, those included and those identified with the NECPAL CCOMS-ICO© instrument for each service. The three services with more patients with palliative care needs were: Palliative Care Unit 100%, Oncology 54.54%, and Emergency Department Short Stay Unit 54.16%.

Figure 1 shows the study patients’ flowchart and NECPAL groups. Of the patients included, 79 without cognitive impairment answered the ESAS and DED scales.

Fig. 1
figure 1

Study flowchart

Physical symptoms according to ESAS

Supplemental Table S2 (supplemental material) lists the prevalence and intensity of patients’ symptoms by NECPAL group, according to the ESAS Scale. Differences among the three categories (non-NECPAL, NECPAL I-II, and NECPAL III) were analyzed. As mentioned, the ESAS was completed by 79 patients; of these, 36 patients (45.6%) presented pain of more than two weeks’ duration. 50.63% of patients had pain with a severity of 4 or more on the Visual Analog Scale, with a mean intensity of pain of 3.51 (SD 3.16) and a median of 4 (range 0–10).

Other variables assessed

Slightly less than one-third (31.3%) had some type of cancer (by category: 0% non-NECPAL; 26% NECPAL I-II; 48.5% NECPAL III) (p < 0.001).

The descriptive analysis of the variables related to the NECPAL tool is shown in Table 1.

Table 1 Patient characteristics according to NECPAL tool variables

Emotional Distress through the DED Scale: Based on the DED, 64.1% of patients presented emotional distress, with a mean on the DED scale of 10.28 (5.48) and a median of 10 (6.75-14).

Comorbidity with the Charlson Index: No statistically significant differences among the different groups were seen on the Charlson index. Mean scores were as follows: non-NECPAL group (mean score = 2); NECPAL I-II (mean, 3); and NECPAL III (mean score, 3).

Social Risk Factors: 128 patients (54.23%) or relatives could answer the questions related to social risk factors. Most patients, 197 (83.60%), had at least one social risk factor: 6.66% of the patients were illiterate; 66.66% had completed primary education, and only 7.50% had completed university studies; 13.29% of the patients lived alone; 12.88% had a main caregiver older than 80 years old; in 21.88% of cases, there were other members in the environment that needed care; 37.80% commented that they would need help from an external caregiver; 32.82% considered the health status of their caregiver as fair/bad or very bad; 37.60% would need help.

Pharmacological Treatments: Table 2 shows the medications, especially the use of analgesics. Of patients with pain (Supplemental Table S2), 19.50% were receiving opioids: 2.95% of non-NECPAL patients, 16.20% of NECPAL I-II patients, and 28.90% of NECPAL III (p = 0.002); with a mean of 9.29 drugs per patient.

Table 2 Medical prescriptions in place on the day of study inclusion and mean number of medications per patient

Previous Hospital Admissions and Interdepartmental Consultations: For 50.80% of patients, no referrals were made to specialized care teams or units (psychology, social work, or hospital palliative and supportive care). Table 3 shows the duration of hospitalization, number of hospital admissions in the last year, and number of stays in the emergency department in the previous year.

Table 3 Duration of admission, hospital admissions and stays in the emergency department in the last year

Discussion

The most relevant contribution of the study is the assessment of the prevalence of patients with palliative care needs in a tertiary hospital. The results have shown that a high percentage of patients with palliative care needs (33.55%) could not be identified without the systematic use of a tool. Most of them have symptoms to control and social risk factors.

The use of the NECPAL CCOMS-ICO© instrument is not limited to a specific region or a specific country. In recent years, its use has been widespread in different countries. In 2021, it was validated in Chile by Troncoso et al. [21] and Brazil [22]. This tool was used to identify patients’ conditions and palliative care in five Italian regions [23] and a Portuguese liver unit [24]. A study with the NECPAL tool has also been carried out in a tertiary hospital but only in the Internal Medicine Service, and in a regional hospital assessing all services but with small sample size and without assessing patients’ symptoms [25].

The NECPAL tool is not only a tool for research purposes, but it is a feasible tool that can be used in the clinical setting and whose application does not exceed ten minutes when there is sufficient clinical knowledge of the patient. The NEPCAL tool could be implemented as a routine assessment to better identify patients with palliative care needs and could be completed by the physician in charge of the patient, together with the nurse, during admission of hospitalized patients, at least 24 h after admission entry.

Numerous studies have also been carried out in the hospital environment using other tools, such as GSF-PIG or the Gold Standards Framework to identify individuals with palliative care needs. However, in many of them, patient input was not included [14]. In addition, even when patient input was included, fewer variables were collected compared to our study [12].

The prevalence rates found in the present study are consistent with rates described in other studies conducted in our geographical area and internationally. The prevalence in our study (33.5%) is within this rate; Zertuche et al. [2] found that 25% of inpatients presented were advanced-terminally ill. Studies in other countries using the GSF-PIG to identify patients with PC needs have reported prevalence rates ranging from 19 to 36% [12, 14, 15].

By NECPAL category, we found that the most significant proportion of NECPAL III patients (48.5%) were cancer patients; similarly to Gott et al. [15], who found that 47% of patients met at least one GSF-PIG criterion had cancer. Notably, the NECPAL III patients presented more weight loss and functional decline in the last six months. For this reason, the inpatients most affected by chronic illness are those who have cancer as a chronic condition. In other words, cancer patients not only make up the largest group of NECPAL III patients but are also the most affected by their illness.

Patients with chronic illnesses presented a higher rate of comorbidities [26, 27]. Our findings are consistent with the data reported in other studies conducted in hospital settings, in which Charlson index scores ranged from three to four [28,29,30].

Based on the ESAS scale, we found no significant differences in physical symptoms among the three NECPAL groups. This finding could be related to our population, which was mainly made up of hospitalized patients admitted due to acute symptoms related to an intercurrent process, which can lead to inadequate symptom control in all groups. Thus, variables related to the patient’s previous deterioration (due to the chronic illness rather than the current intercurrent process) significantly differed among the three NECPAL groups. NECPAL III patients showed more significant deterioration in weight loss, Barthel index < 20, loss of ≥ 2 activities of daily living, functional deterioration, dysphagia, and the need for complex care. Naturally, these patients were most affected by their chronic illness before admission.

Although we did not find any significant differences among the groups in terms of symptom severity and prevalence, symptoms reported through the ESAS scale were highly prevalent in all groups, a fact that is consistent with previous reports in which patients admitted for chronic complex and advanced illnesses present a high burden of symptoms [31].

Moreover, the high percentage of patients with pain is consistent with previous reports, in which 50% of patients present pain [32], which is often undermedicated [33]. Other studies have also reported scant use of opioids, and previous reports have shown that their use in Spain is below the European average [34].

In terms of drug prescriptions at the time of enrollment, patients in the study sample were taking many medications. This fact was comparable to other reports in our region, in which inpatients were taking an average of 7 to 8 drugs each [28, 35, 36]. In this sense, it is important to stress that inappropriate medication can lead to adverse healthcare results, including severe side effects and unnecessary hospitalizations related to polypharmacy [36], associated with high mortality rates [37].

It was not directly assessed whether clinicians followed specific criteria to refer patients for interdepartmental consultations. It is well-documented that interdisciplinary palliative care teams positively affect the course of the illness in patients and families [38, 39] and even survival [40], which means that greater involvement of these teams would be beneficial. Thus, after the identification with the NECPAL tool, NECPAL-positive patients could also be screened with other tools to determine their complexity, such as the PALCOM tool [41]. The PALCOM tool includes socio-demographic and clinical data, symptom burden, functional and cognitive status, psychosocial problems, and existential-ethical dilemmas. Based on this multidimensional evaluation, patients are classified as high, medium, or low palliative complexity, associated with needing basic or specialized palliative care teams. Patients could be referred to specific palliative care teams depending on their complexity, but to do so, they should first be identified with the NECPAL tool.

Finally, we demonstrated significant differences in the clinical characteristics of patients stratified according to disease severity measured by the NECPAL (NECPAL I-II versus NECPAL III).

One of the main strengths of this study is that a single researcher performed data collection. Moreover, this same researcher was responsible for all in-person interviews with patients and healthcare professionals. This approach ensured consistency in data collection.

The study’s limitations include that, although the ESAS and DED scales have only been validated in cancer populations, we applied these tools to the whole sample, which included a sizeable percentage of non-cancer patients. However, given the widespread use of these tools and the lack of scales with similar characteristics for non-cancer populations, we believe thattheir use in this study was justified. Finally, the study was conducted in a single acute care hospital (and its associated cancer center); as a result, it may not be possible to generalize these results to other centers or countries.

In summary, many patients admitted to a tertiary care hospital presented palliative care needs, with multiple physical, emotional distress, and social needs. The availability of a tool like NECPAL would allow the identification of these patients without a subjectivity bias. Although there are significant differences in the clinical characteristics of patients based on disease severity measured by different NECPAL groups, our findings would need to be confirmed by similar studies in different hospitals.

Availability of data and materials

The datasets used during the current study are available from the corresponding author upon reasonable request.

Abbreviations

CRD:

Clinical Research Document

DED:

Detection of Emotional Distress

DIR:

Duran i Reynals Hospital

EDSSU:

Rheumatology, Emergency Department Short Stay Unit

ESAS:

Edmonton Symptom Assessment Scale

GAU:

Internal Medicine, Geriatric Assessment Unit

GCPs:

Declaration of Helsinki and Good Clinical Practices

GSF-PIG:

The Gold Standards Framework - Proactive Identification Guidance

HUB:

Bellvitge University Hospital

PCU:

Palliative Care Unit

SD:

Standard Deviation

SQ:

Surprise Question

References

  1. Gómez-Batiste X, Martínez-Muñoz M, Blay C, Espinosa J, Contel JC, Ledesma A. Identifying needs and improving palliative care of chronically ill patients: A community-oriented, population-based, public-health approach. Curr Opin Support Palliat Care. 2012;6:371–8.

    Article  PubMed  Google Scholar 

  2. Zertuche T, Güell E, Fariñas O, Ramos A, Gómez-Batiste X, Pascual A. Prevalence of advanced-terminally ill inpatients in an acute tertiary care hospital. EAPC Congress Lisbon, 18–21 May 2011. Poster sessions, Abstract number P238. EAPC Congress Lisbon; 2011.

  3. Gómez-Batiste X, Martínez-Muñoz M, Blay C, Amblàs J, Vila L, Costa X, et al. Prevalence and characteristics of patients with advanced chronic conditions in need of palliative care in the general population: A cross-sectional study. Palliat Med. 2014 Apr;28(4):302–11.

  4. Murtagh FEM, Bausewein C, Verne J, Iris Groeneveld E, Kaloki YE, Higginson IJ. How many people need palliative care? A study developing and comparing methods for population-based estimates. Palliat Med. 2014 Jan;28(1):49–58.

  5. Pivodic L, Pardon K, Miccinesi G, Alonso TV, Moreels S, Donker GA, et al. Hospitalisations at the end of life in four European countries: A population-based study via epidemiological surveillance networks. J Epidemiol Community Health. 2015;70(5):430–6.

    Article  PubMed  Google Scholar 

  6. Boyd K, Murray SA. Recognising and managing key transitions in end of life care. BMJ. 2010;341:c4863.

    Article  PubMed  Google Scholar 

  7. Gott M, Ingleton C, Bennett MI, Gardiner C. Transitions to palliative care in acute hospitals in England: Qualitative study. BMJ. 2011;342(7802):42–8.

    Google Scholar 

  8. Gott M, Seymour J, Ingleton C, Gardiner C, Bellamy G. “That’s part of everybody’s job”: The perspectives of health care staff in England and New Zealand on the meaning and remit of palliative care. Palliat Med. 2012;26(3):232–41.

    Article  PubMed  Google Scholar 

  9. Gardiner C, Cobb M, Gott M, Ingleton C. Barriers to providing palliative care for older people in acute hospitals. Age Ageing. 2011;40(2):233–8.

    Article  PubMed  Google Scholar 

  10. Boyd K, Murray SA. Spotlight: Palliative Care Beyond Cancer Recognising and managing key transitions in end of life care. BMJ. 2010;341(7774):649–52.

    Google Scholar 

  11. Hughes PM, Bath PA, Ahmed N, Noble B. What progress has been made towards implementing national guidance on end of life care? A national survey of UK general practices. Palliat Med. 2010 Jan;24(1):68–78.

  12. Gardiner C, Gott M, Ingleton C, Seymour J, Cobb M, Noble B, et al. Extent of palliative care need in the acute hospital setting: A survey of two acute hospitals in the UK. Palliat Med. 2013;27(1):76–83.

    Article  PubMed  Google Scholar 

  13. To THM, Greene AG, Agar MR, Currow DC. A point prevalence survey of hospital inpatients to define the proportion with palliation as the primary goal of care and the need for specialist palliative care. Intern Med J. 2011;41(5):430–3.

    Article  CAS  PubMed  Google Scholar 

  14. Milnes S, Orford NR, Berkeley L, Lambert N, Simpson N, Elderkin T, et al. A prospective observational study of prevalence and outcomes of patients with Gold Standard Framework criteria in a tertiary regional Australian Hospital. BMJ Support Palliat Care. 2019;9:92–9.

    Article  PubMed  Google Scholar 

  15. Gott M, Frey R, Raphael D, O’Callaghan A, Robinson J, Boyd M. Palliative care need and management in the acute hospital setting: A census of one New Zealand Hospital. BMC Palliat Care. 2013;12:15.

    Article  PubMed Central  PubMed  Google Scholar 

  16. Thomas K, Wilson J, Corner H. Improving end of life care in acute hospitals using the GSF AH training programme phase 2: 2011-12. The National GSF Centre in End of Life Care. 2011;2011:1.

  17. Martínez De La Iglesia J, Herrero RD, Vilches MCO, Taberné CA, Colomer CA, Luque RL. Cross-cultural adaptation and validation of Pfeiffer’s test (Short Portable Mental Status Questionnaire [SPMSQ]) to screen cognitive impairment in general population aged 65 or older. Med Clin (Barc). 2001;117(4):129–34.

  18. Charlson ME, Pompei P, Ales KL, MacKenzie CR. A new method of classifying prognostic comorbidity in longitudinal studies: development and validation. J Chronic Dis. 1987;40(5):373–83.

    Article  CAS  PubMed  Google Scholar 

  19. Tuca-Rodriguez A, Gómez-Batiste X, Espinosa-Rojas J, Martinez-Muñoz M, Codorniu N, Porta-Sales J. Structure, organisation and clinical outcomes in cancer patients of hospital support teams in Spain. BMJ Support Palliat Care. 2012;2(4):356–62.

    Article  PubMed  Google Scholar 

  20. Carvajal A, Centeno C, Watson R, Bruera E. A comprehensive study of psychometric properties of the Edmonton Symptom Assessment System (ESAS) in Spanish advanced cancer patients. Eur J Cancer. 2011;47(12):1863–72.

    Article  PubMed  Google Scholar 

  21. Troncoso J, Morales-Meyer T, Villarroel L, Turrillas P, Rodríguez-Nuñez A. Adaptación y validación en Chile del instrumento de identificación de pacientes con necesidad de atención paliativa: NECPAL-CCOMS-ICO 3.1©. Atención Primaria. 2021;53(4):101994.

    Article  PubMed Central  PubMed  Google Scholar 

  22. Santana MTEA, Gómez-Batiste X, Silva LMG da, Gutiérrez MGR de. Cross-cultural adaptation and semantic validation of an instrument to identify palliative requirements in Portuguese. Einstein (Sao Paulo). 2020;18:eAO5539.

  23. Scaccabarozzi G, Amodio E, Riva L, Corli O, Maltoni M, Di Silvestre G, et al. Clinical care conditions and needs of palliative care patients from five italian regions: Preliminary data of the demetra project. Healthc. 2020;8(3):1–9.

    Article  Google Scholar 

  24. Carvalho JR, Vasconcelos M, Marques da Costa P, Marinho RT, Fatela N, Raimundo M, et al. Identifying palliative care needs in a Portuguese liver unit. Liver Int. 2018;38(11):1982–7.

    Article  PubMed  Google Scholar 

  25. Rodríguez-Calero M, Julià-Mora JM, Prieto-Alomar A. Detección de necesidad de atención paliativa en una unidad de hospitalización de agudos. Estudio piloto. Enferm Clin. 2016;26(4):238–42.

    Article  PubMed  Google Scholar 

  26. Janssen DJA, Spruit MA, Uszko-Lencer NH, Schols JMGA, Wouters EFM. Symptoms, comorbidities, and health care in advanced chronic obstructive pulmonary disease or chronic heart failure. J Palliat Med. 2011;14(6):735–43.

    Article  PubMed  Google Scholar 

  27. Highet G, Crawford D, Murray SA, Boyd K. Development and evaluation of the supportive and palliative care indicators tool (SPICT): A mixed-methods study. BMJ Support Palliat Care. 2014;4(3):285–90.

    Article  PubMed  Google Scholar 

  28. Bernabeu-Wittel M, Ollero-Baturone M, Moreno-Gaviño L, Barón-Franco B, Fuertes A, Murcia-Zaragoza J, et al. Development of a new predictive model for polypathological patients. The PROFUND index. Eur J Intern Med. 2011;22(3):311–7.

    Article  CAS  PubMed  Google Scholar 

  29. Bernabeu-Wittel M, Murcia-Zaragoza J, Hernández-Quiles C, Escolano-Fernández B, Jarava-Rol G, Oliver M, et al. Development of a six-month prognostic index in patients with advanced chronic medical conditions: The PALIAR score. J Pain Symptom Manage. 2014;47(3):551–65.

    Article  PubMed  Google Scholar 

  30. Bernabeu-Wittel M, Jadad A, Moreno-Gaviño L, Hernández-Quiles C, Toscano F, Cassani M, et al. Peeking through the cracks: An assessment of the prevalence, clinical characteristics and health-related quality of life (HRQoL) of people with polypathology in a hospital setting. Arch Gerontol Geriatr. 2010;51(2):185–91.

    Article  CAS  PubMed  Google Scholar 

  31. Robinson J, Gott M, Ingleton C. Patient and family experiences of palliative care in hospital: What do we know? An integrative review. Palliat Med. 2014;Vol. 28:18–33.

    Article  PubMed  Google Scholar 

  32. Holtan A, Aass N, Nordøy T, Haugen DF, Kaasa S, Mohr W, et al. Prevalence of pain in hospitalised cancer patients in Norway: A national survey. Palliat Med. 2007;21(1):7–13.

    Article  PubMed  Google Scholar 

  33. Cleeland CS, Gonin R, Hatfield AK, Edmonson JH, Blum RH, Stewart JA, et al. Pain and Its Treatment in Outpatients with Metastatic Cancer. Surv Anesthesiol. 1994;38(6):349.

    Article  Google Scholar 

  34. Cleary J, Radbruch L, Torode J, Cherny NI. Formulary availability and regulatory barriers to accessibility of opioids for cancer pain in Asia: A report from the Global Opioid Policy Initiative (GOPI). Ann Oncol. 2013;24(SUPPLEMENT11):615–26.

    Google Scholar 

  35. Amblàs Novellas J, Panicot JE, Pueyo CB, Brunet NM, Lucchetti d’Aniello GE, Arisa AA, et al. Tópicos y reflexiones sobre la reducción de ingresos hospitalarios: De la evidencia a la práctica. Rev Esp Geriatr Gerontol. 2013 Jan;48(6):290–6.

  36. Molist Brunet N, Espaulella Panicot J, Sevilla-Sánchez D, Amblàs Novellas J, Codina Jané C, Altimiras Roset J, et al. A patient-centered prescription model assessing the appropriateness of chronic drug therapy in older patients at the end of life. Eur Geriatr Med. 2015 Dec;6(6):565–9.

  37. Kane RL, Shamliyan T, Talley K, Pacala J. The association between geriatric syndromes and survival. J Am Geriatr Soc. 2012 May;60(5):896–904.

  38. Gómez-Batiste X, Porta-Sales J, Espinosa-Rojas J, Pascual-López A, Tuca A, Rodriguez J. Effectiveness of palliative care services in symptom control of patients with advanced terminal cancer: A Spanish, multicenter, prospective, quasi-experimental, pre-post study. J Pain Symptom Manage. 2010 Nov;40(5):652–60.

  39. Higginson IJ, Finlay IG, Goodwin DM, Hood K, Edwards AGK, Cook A, et al. Is there evidence that palliative care teams alter end-of-life experiences of patients and their caregivers? J Pain Symptom Manage. 2003;25(2):150–68.

  40. Temel JS, Greer JA, Muzikansky A, Gallagher ER, Admane S, Jackson VA, et al. Early Palliative Care for Patients with Metastatic Non–Small-Cell Lung Cancer. N Engl J Med. 2010 Aug;363(8):733–42.

  41. Tuca A, Gómez-Martínez M, Prat A. Predictive model of complexity in early palliative care: a cohort of advanced cancer patients (PALCOM study). Support Care Cancer Off J Multinatl Assoc Support Care Cancer. 2018;26(1):241–9.

    Google Scholar 

Download references

Acknowledgements

We wish to thank Judit Solà Roca for helping analyze the data, Sara Ela for her assistance throughout the study, Elena Sanchez-Vizcaíno Mengual for medical writing assistance, and Bradley Londres for the translation.

Funding

This study has not received any funding or grant.

Author information

Authors and Affiliations

Authors

Contributions

All authors contributed to the study’s conception and design. AC-B and EBA performed material preparation, data collection, and analysis. AC-B wrote the first draft of the manuscript, and all authors commented on previous versions. All authors read and approved the final manuscript.

Corresponding author

Correspondence to Agnès Calsina-Berna.

Ethics declarations

Ethics approval and consent to participate

The study was conducted following the principles outlined in the revised version of the Declaration of Helsinki and Good Clinical Practices (GCPs) and was approved by the Bellvitge University Hospital Ethics Committee (Reference PR069/12). Signed informed consent was obtained from all patients who answered the questionnaires.

Consent for publication

Not applicable.

Competing interests

The authors declare that they have no competing interests.

Additional information

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Supplementary information

Additional file 1:

Supplementary Table S1. Distribution of admitted patients, those included, those identified with the Surprise Question and those identified with the NECPAL CCOMS-ICO © instrument for each service.

Additional file 2:

Supplementary Table S2. Prevalence and intensity of symptoms according to the ESAS scale.

Rights and permissions

Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.

Reprints and permissions

About this article

Check for updates. Verify currency and authenticity via CrossMark

Cite this article

Calsina-Berna, A., Amblàs Novellas, J., González-Barboteo, J. et al. Prevalence and clinical characteristics of patients with Advanced Chronic Illness and Palliative Care needs, identified with the NECPAL CCOMS-ICO© Tool at a Tertiary Care Hospital. BMC Palliat Care 21, 210 (2022). https://0-doi-org.brum.beds.ac.uk/10.1186/s12904-022-01101-4

Download citation

  • Received:

  • Accepted:

  • Published:

  • DOI: https://0-doi-org.brum.beds.ac.uk/10.1186/s12904-022-01101-4

Keywords