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university of groningen patient generated subjective global assessment short form better predicts length of stay than short nutritional assessment questionnaire dewansingh priya euwes margreet krijnen wim p strijbos jaap h ...

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        University of Groningen
        Patient-Generated Subjective Global Assessment Short Form better predicts length of stay
        than Short Nutritional Assessment Questionnaire
        Dewansingh, Priya; Euwes, Margreet; Krijnen, Wim P; Strijbos, Jaap H; van der Schans,
        Cees P; Jager-Wittenaar, Harriët
        Published in:
        Nutrition
        DOI:
        10.1016/j.nut.2021.111366
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        Publication date:
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           Citation for published version (APA):
           Dewansingh, P., Euwes, M., Krijnen, W. P., Strijbos, J. H., van der Schans, C. P., & Jager-Wittenaar, H.
           (2021). Patient-Generated Subjective Global Assessment Short Form better predicts length of stay than
           Short Nutritional Assessment Questionnaire. Nutrition, 91-92, [111366].
           https://doi.org/10.1016/j.nut.2021.111366
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                                                                                    Nutrition 9192(2021)111366
                                                                           ContentslistsavailableatScienceDirect
                                                                                          Nutrition
                                                                    journal homepage: www.nutritionjrnl.com
               Appliednutritional investigation
               Patient-Generated Subjective Global Assessment Short Form better
               predicts length of stay than Short Nutritional Assessment
               Questionnaire
                                                    a,                                      b                                   a,c                                  d
               Priya DewansinghMSc *,MargreetEuwesMSc ,WimP.KrijnenPhD ,JaapH.StrijbosMD ,
                                                                       a,e,f,g          €                                     a,h
               CeesP.vanderSchansPT,CE,PhD                                    , Harriet Jager-Wittenaar PhD
               a Research Group Healthy Ageing, Allied Health Care and Nursing, Hanze University of Applied Sciences, Groningen, The Netherlands
               bAcuteCareRehabilitation, Nij Smellinghe Hospital, Drachten, the Netherlands
               c Faculty of Mathematics and Natural Sciences, University of Groningen, Groningen, the Netherlands
               dDepartmentofLungDiseases,NijSmellingheHospital,Drachten,theNetherlands
               e Faculty of Medical Sciences, University Medical Center Groningen, Groningen, the Netherlands
               f Department of Rehabilitation Medicine, University of Groningen, University Medical Center Groningen, Groningen, the Netherlands
               g DepartmentofHealthPsychologyResearch,UniversityofGroningen,UniversityMedicalCenterGroningen,Groningen,theNetherlands
               hDepartmentofOralandMaxillofacialSurgery,UniversityofGroningen,UniversityMedicalCenterGroningen,Groningen,theNetherlands
               ARTICLE INFO                                      ABSTRACT
               Article History:                                  Objective: Malnutrition screening instruments used in hospitals mainly include criteria to identify character-
               Received18December2020                            istics of malnutrition. However, to tackle malnutrition in an early stage, identifying risk factors for malnutri-
               Receivedinrevisedform26April2021                  tion in addition to characteristics may be valuable.
               Accepted24May2021                                 The aim of this study was to determine the predictive validity of the Patient-Generated Subjective Global
               Keywords:                                         Assessment (PG-SGA SF), which addresses malnutrition characteristics and risk factors, and the Short Nutri-
               Malnutrition                                      tional Assessment Questionnaire (SNAQ), which addresses mainly malnutrition characteristics, for length of
               Predictive validity                               stay (LOS) in a mixed hospital population.
               Lengthofstay                                      Methods: Patients (N = 443) were screened with the PG-SGA SF and SNAQ in the first 72 h after admission to
               PG-SGA                                            the lung, cardiology, or surgery ward. The McNemarBowker test was used to investigate the symmetry
               SNAQ                                              betweentheSNAQandPG-SGASFcategorizationforlow,medium,andhighrisk.Thepredictivevalueofthe
                                                                 PG-SGASFandSNAQwasassessedbyg-regressionbeforeandafteradjustingforseveralconfounders.
                                                                 Results: Of the 443 patients included, 23% and 58% were categorized as being at medium/high risk for malnu-
                                                                 trition according to the SNAQ and PG-SGA SF, respectively. The regression analysis indicated that LOS of
                                                                 high-risk patients according to PG-SGA SF was 36% longer than that of low-risk patients (P = 0.001). LOS in
                                                                 patients at high risk according to the SNAQ did not significantly differ from that of SNAQ low-risk patients.
                                                                 Conclusions: The PG-SGA SF, as a proactive malnutrition screening instrument, predicts LOS in various hospi-
                                                                 tal wards, whereas the SNAQ, as a reactive instrument, does not. Therefore, we recommend the PG-SGA SF
                                                                 for proactive screening for malnutrition risk.
                                                                           ©2021TheAuthors.PublishedbyElsevierInc.ThisisanopenaccessarticleundertheCCBYlicense
                                                                                                                                      (http://creativecommons.org/licenses/by/4.0/)
                                                                                                      Introduction
                                                                                                           Current estimates of the prevalence of malnutrition reveal that
                 PDwasresponsible for conceptualization, data curation, formal analysis, investi-     20%to50%ofhospitalpatientsaremalnourished[1].Thisvariation
               gation, methodology, project administration, validation, visualization, and writing    is possibly caused by variation in screening and assessment meth-
               of the original draft. ME and HJW were responsible for conceptualization, method-      ods, and hospital population [2,3]. Malnutrition is associated with
               ology, resources, supervision, writing, review, and editing. JS was responsible for
               writing, review, and editing. WK was responsible for conceptualization, methodol-      poor clinical outcomes, including a longer hospital length of stay
               ogy, formal analysis, review, and editing. CP was responsible for conceptualization,   (LOS)[48].
               methodology,supervision,visualization, writing, review, and editing.                        Thus far, validated screening instruments have been imple-
                 *Correspondingauthor:Tel.:+31640217313.                                              mented mostly for the purpose of identifying patients who are
                   E-mailaddress: p.dewansingh@pl.hanze.nl (P. Dewansingh).
               https://doi.org/10.1016/j.nut.2021.111366
               0899-9007/©2021TheAuthors.PublishedbyElsevierInc.ThisisanopenaccessarticleundertheCCBYlicense(http://creativecommons.org/licenses/by/4.0/)
            2                                                              P. Dewansinghetal. / Nutrition 9192 (2021) 111366
            malnourished at hospital admission [9], which can be considered a                           ear, musculoskeletal, digestive system, endocrine and metabolic diseases, urinary
            reactive malnutrition policy. Reactive malnutrition screening and                           systemandkidneydisease,andother.
            assessment instruments focus mainly on critical weight loss [10].
            Such instruments, like the Short Nutritional Assessment Question-                           Statistical analyses
            naire (SNAQ), which is used widely in the Netherlands, are effec-                                Statistical analyses were carried out using SPSS version 24 (SPSS Inc, Chicago,
            tive in identifying hospital patients who have characteristics of                           IL, USA). Descriptive statistics including frequencies and percentages were pro-
            presentmalnutrition [9,11].                                                                 duced for sex, hospital wards, PG-SGA SF categories, SNAQ categories, medical
                Proactive screening of risk for malnutrition aims to identify                           diagnosis, and the CCI. Mean and § SD are reported for the variables age and BMI.
            patients having risk factors for future malnutrition, in addition to                        Median and interquartile range (IQR) are reported for LOS and PG-SGA SF scores.
            patients who are already malnourished [12]. Early identification of                          NormalitywastestedwiththeShapiroWilktest.A3£3tablewasusedtodepict
                                                                                                        the SNAQandPG-SGASFcategories(i.e., low, medium, and high risk for malnutri-
            malnutrition and its accompanying risk factors is needed to facilitate                      tion). The McNemarBowker test was used to test symmetry in the cross tabula-
            nutritional treatment in a timely manner to prevent negative changes                        tion of SNAQbyPG-SGASFcategories.
            in nutritional status [13,14]. The most studied proactive screening                              Prevalence of risk for malnutrition and PG-SGA SF box scores are reported as
            instrument is the Patient-Generated Subjective Global Assessment                            frequencies with percentages or median and IQR. The predictive value of both the
                                                                                                        PG-SGA SF and SNAQ was assessed by the generalized linear model (GLM), in
            Short Form (PG-SGA SF), which has mainly been used in patients                              whichaloglinkforg-regressionastheoutcomeLOS,wasmeasuredasanon-neg-
            with cancer [15]. The PG-SGA SF is a multidimensional instrument                            ative (broken) counts of days according to Allen et al. [22]. The variables age, sex,
            addressing short-, medium-, and long-term weight history, food                              BMI, diagnosis, and comorbidity were included in the GLM to correct for effects of
            intake, nutrition impact symptoms (NIS; i.e., symptoms hindering                            these variables on LOS. Subgroup GLM analyses were performed per hospital ward
                                                                                                        (i.e., lung disease, cardiology, and surgery). Additionally, subgroup analysis with
            food intake), and activities and function [15].NIShaveproventobe                            GLManalysis was performed on patients who scored low risk for malnutrition by
            significant predictors of reduced dietary intake and weight [16].                            theSNAQ,butmediumorhighriskaccordingtothePG-SGASF.Inallanalyses,sta-
                It is not known if screening proactively for both characteristics                       tistical significance was set at P < 0.05.
            of malnutrition and its risk factors leads to higher predictive valid-
            ity on LOS compared with reactive screening. Therefore, in the                              Results
            present study, we aimed to determine the predictive validity of a
            proactive malnutrition risk instrument with predictive validity of a                             Therewere443patientsincludedintheanalyses.Table1shows
            reactive risk for malnutrition screening instrument in relation to                          the characteristics of the study sample and per hospital ward. Par-
            LOSinahospitalsetting.                                                                      ticipants were 64.5 § 14.6 y of age and had BMI of 26.7 § 5.1 kg/
                                                                                                        m2
                                                                                                            . More than half of the participants (54%) were men. In all, 128
            Materialandmethods                                                                          (29%), 101 (23%), and 214 (48%) of the patients were admitted to
                                                                                                        the lung disease ward, cardiology ward, and surgery ward, respec-
            Studydesign                                                                                 tively. All values were present for the scores of the PG-SGA boxes.
                                                                                                        AccordingtothePG-SGASF,30%(n=132)and29%(n=128)ofpar-
                In this cross-sectional study, patients admitted to the regional hospital Nij           ticipants were at medium and high risk for malnutrition, respec-
            Smellinghe, located in Drachten, the Netherlands, were recruited from August 3,             tively. According to the SNAQ, 6% (n = 26) of participants were at
            2016toJune12,2017.Thefollowinginclusioncriteria wereapplied: 18yof age;                    medium risk for malnutrition, and 18% (n = 78) were at high risk
            admission to the lung disease, cardiology, or surgery wards; and measurements
            performed within 72 h of hospital admission. Patients were excluded when they               for malnutrition (Fig. 1).
            could not write or speak Dutch, or if they had severe cognitive problems. This
            study was approved by the Medical Ethics Committee of hospital Nij Smellinghe.              Prevalence of risk for malnutrition per screening instrument
            Informed consent was obtained from all participants before study measurements
            wereperformed.
                                                                                                             Table 2 shows the 3 £ 3 contingency table of the participants
            Studymeasures                                                                               according to the SNAQ and PG-SGA SF risk for malnutrition catego-
                                                                                                        ries. Half of the participants who were at low risk for malnutrition
                ThePG-SGA[12,15]wastranslatedandculturallyadaptedtotheDutchsetting                      according to the SNAQ were at medium or high risk for malnutrition
            in 2014 [17]. The PG-SGA SF, which consists of scores assigned to questions                 according to the PG-SGA SF. Of the participants at low risk for malnu-
            divided over four boxes, addressing weight history (Box 1), food intake (Box 2),            trition according to the PG-SGA SF, 8% were at medium or high risk
            NIS (Box 3), and activities and function (Box 4), was completed by the patient.
            Whenthepatient was unable to fill in the PG-SGA SF, the researcher, dietitians in            for malnutrition according to the SNAQ. Of the participants, 51% were
            training, and/or family members assisted. All weight values (i.e., the current, 1 mo        categorized equally by the SNAQ and PG-SGA SF. The McNe-
            ago, and 6 mo ago), as well as height were self-reported by the patient. Based on           marBowker test indicates rejection of the null hypothesis of sym-
            the numeric scores from the four boxes, patient risk for malnutrition was catego-           metryoftheSNAQbyPG-SGASFcrosstabulation(P<0.001).
            rized as low (03 points), medium or high (4 points), or high (9 points)                       Table3summarizesthePG-SGASFandSNAQscoresperriskfor
            [12,18,19]. Body mass index (BMI) was calculated with the information from the
            PG-SGASFaboutcurrentweightandheight(kg/m2).                                                 malnutrition category. The median PG-SGA SF score was 5
                SNAQcontainsthefollowingthreequestions:                                                 (IQR=19),and14%(n=60)participantshadaPG-SGASFscoreof
             1. “Did you lose weight unintentionally? More than 6 kg in the past 6 mo (3                0. Median SNAQ score was 0 (IQR = 01). Half (n = 223) of the par-
                points) or more than 3 kg in the past month?” (2 points);                               ticipants had a SNAQ score of 0.
             2. “Didyouexperienceadecreasedappetiteoverthepastmonth?”(1point);
             3. “Did you use supplemental drinks or tube feeding over the past month?” (1               Subgroupanalysisofriskformalnutrition perhospital ward
                point).
                Low-risk for malnutrition according to the SNAQ was defined as 0 to 1 point,                  Figure1showsthatacrossthethreehospitalwards,thePG-SGA
            mediumandhighas2to7points,andhighas>2points[9].                                             SF categorized 2.5 times more participants at medium or high risk
                Information on LOS, age, sex, diagnosis, and comorbidity was retrieved from             compared with the SNAQ. The PG-SGA SF categorized 3.1 times
            the medical records. Comorbidities, if present, were converted to the Charlson              more participants at medium or high risk compared with the
            ComorbidityIindex(CCI)byassigningaweightedscoretoeachof17comorbidities                      SNAQ for participants admitted to the lung diseases ward, and
            [20]. For diagnosis, due to a variety of diagnoses, 11 main categories were formed          2.7 times and 2.1 times more frequently for participants admitted
            using the International Classification of Disease (ICD-10) [21]. The categories were
            respiratory, cancer, fractures, trauma, circulatory, infectious and parasitic, eye and      to the cardiology and surgery wards, respectively.
                                                                  P. Dewansinghetal. / Nutrition 9192 (2021) 111366                                              3
             Table1
             Characteristics of the study population
               Demographicinformation                        Total (N = 443)          Lungdisease(n=128)             Cardiology(n=101)            Surgery(n=214)
               Age(y),mean§SD                                 64.5§14.6               64.6 §15.2                     67.7§11.2                    62.9§15.5
               Men,n(%)                                      241(54)                   65(51)                        67(66)                       109(51)
                        2
               BMI(kg/m ),mean§SD                            26.7§5.1                 26.4 §5.8                      27.3§11.2                    26.6§5.2
               Diagnosis, n (%)
                 Respiratory                                 123(28)                  112(88)                        10(10)                         1(1)
                 Digestive system                             90(20)                    2(2)                          2(2)                         86(40)
                 Circulatory                                  77(17)                    2(2)                         65(64)                        10(5)
                 Cancer                                       28(6)                     5(4)                          2(2)                         21(10)
                 Fractures                                    28(6)                     0                             1(1)                         27(13)
                 Musculoskeletal                              17(4)                     2(2)                         12(12)                         3(1)
                 Urinarysystemandkidneydisease                30(7)                     0                             1(1)                         29(14)
                 Other                                        50(11)                    5(4)                          8(8)                         37(17)
               CharlsonComorbidityIndexscore,n(%)
                 0                                           254(57)                   72(53)                        40(40)                       142(66)
                 1                                           106(24)                   30(23)                        31(31)                        45(21)
                 2                                            52(12)                   15(12)                        18(18)                        19(9)
                 3                                            20(5)                     6(5)                          7(7)                          7(3
                 4                                            10(2)                     5(4)                          5(5)                           0
                 11                                            1(0.2)                   0                              0                            1(1)
               LOS,median(IQR)                                4.2 (2.87.1)           4.8 (3.17.7)                  3.9 (2.16.9)                 4.2 (2.87.1)
             BMI,bodymassindex;IQR,interquartilerange;LOS,lengthofstay
             Fig. 1. Prevalence of risk for malnutrition per hospital ward, according to the SNAQ and PG-SGA SF. PG-SGA SF: low risk = 03 points, medium risk = 48 points, high risk 9
             points. SNAQ: low risk = 01 points, medium risk = 2 points, high risk 3 points. PG-SGA SF, Patient-Generated Subjective Global Assessment Short Form; SNAQ, Short Nutri-
             tional Assessment Questionnaire.
             Table2                                                                       lung disease participants were no appetite, dry mouth, and fatigue.
             SNAQandPG-SGASFcategorization(N=443)                                         Participants admitted to the cardiology ward had a total median PG-
                               Lowrisk      SNAQModeraterisk      Highrisk     Total      SGA SF score of 3 points (IQR = 17), and mainly reported NIS and
                                                                                          problemswithactivities and function. The most reported NIS in these
               PG-SGASF                                                                   participants were no appetite, feeling full quickly, and fatigue. The
               Lowrisk         170          8                     6            184        total median PG-SGA SF score of participants admitted to the surgery
               Mediumrisk      101          9                     22           132
               Highrisk        69          9                      49           127        ward was 4 (IQR = 110). The participants admitted to the surgery
               Total           340          26                    77           443        ward reported mainly problems with food intake and NIS, and their
             PG-SGA SF, Patient-Generated Subjective Global Assessment Short Form; SNAQ,  mostreportedNISwerenoappetite,fatigue,nausea,andpain.
             Short Nutritional Assessment Questionnaire                                       The median score (IQR) for the SNAQ per hospital ward was 1
             PGSGASF:lowrisk=03points,mediumrisk=48points,highrisk9points             (01) for the lung disease ward, and 0 (01) for the cardiology,
             SNAQ:lowrisk=01points,mediumrisk=2points,highrisk3points                   and0(02)forthesurgeryward.
                 Table 4 shows scores on the PG-SGA SF and SNAQ per hospital              Predictive value of risk for malnutrition on LOS
             ward.Participantsadmittedtothelungdiseasewardshadthehighest
             total median score on the PG-SGA SF (i.e., 6 points [IQR = 2.259.75]).          Participants at risk for malnutrition (i.e., medium and high risk)
             Lung disease patients mainly reported problems of food intake, NIS,          according to PG-SGA SF or SNAQ, had both a median hospital LOS
             and activities and function. The most frequently reported NIS in the         of 4.9 d, respectively. High-risk participants according to PG-SGA
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...University of groningen patient generated subjective global assessment short form better predicts length stay than nutritional questionnaire dewansingh priya euwes margreet krijnen wim p strijbos jaap h van der schans cees jager wittenaar harriet published in nutrition doi j nut important note you are advised to consult the publisher s version pdf if wish cite from it please check document below also known as record publication date link umcg research database citation for apa m w c https org copyright other strictly personal use is not permitted download or forward distribute text part without consent author and holder unless work under an open content license like creative commons may be distributed here terms article fa dutch act indicated by taverne more information can found on website www rug nl library access self archiving pure amendment take down policy believe that this breaches contact us providing details we will remove immediately investigate your claim downloaded http por...

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