Patient-Led, Technology-Assisted Malnutrition Risk Screening in Hospital: A Feasibility Study
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design and Outcome Measures
- (a)
- ≥50% of eligible patients (or family member/s) approached agree to participate
- (b)
- ≥75% of participants complete e-MST within 24 h of recruitment
2.2. Study Setting and Participants
2.3. Data Collection
2.4. Data Analysis
3. Results
3.1. Demographic and Clinical Nutrition Data
3.2. Feasibility
3.3. Acceptability
3.4. Cost Effectiveness
4. Discussion
4.1. Strengths and Limitations
4.2. Implications for Practice
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Study Phase | Study Procedure | Data Collection |
---|---|---|
Main study (Oct–Nov 2022) | Eligibility screening and recruitment (participants shown e-MST on bedside computer by RA) | Recruitment rate |
Participant completes e-MST within 24 h of recruitment (with/without assistance from RA) | e-MST completion date/time and score (extracted from EFS), RA time spent assisting patients | |
RA administers survey (same day as patient completes e-MST) and interviews a subset of participants | Patient satisfaction survey and acceptability semi-structured interviews | |
Electronic medical records data extraction | Demographic, clinical and nutrition data (including nurse-completed MST scores) | |
Economic evaluation of e-MST screening per true case of malnutrition | Surveys (nurses, dietitians, dietitian assistants, RA), ieMR and EFS MST scores, Queensland Health standard award rates (2023 for dietitian (HP4), nurse (NG5), dietitian assistant (CA3), RA (HP 3.4) | |
Sustainability study (April 2023) | Flyers sent on patient meal trays (five wards; one ward per day) | RA field notes |
Patients complete e-MST by end of day | e-MST completion and scores extracted from EFS |
Variable | N (%) | |
---|---|---|
Ward | Oncology Orthopedic Gastrointestinal surgical Gastrointestinal medical Surgical Renal Medical/vascular | 24 (19.8) 21 (17.4) 21 (17.4) 17 (14.0) 17 (14.0) 12 (9.9) 9 (7.4) |
Comorbidities | Cardiovascular Gastrointestinal Cancer Surgery Respiratory Diabetes Renal Neurology Trauma | 53 (43.8) 46 (38.0) 42 (34.7) 39 (32.2) 21 (17.4) 21 (17.4) 20 (16.5) 10 (8.3) 7 (5.8) |
Dietetic input | Seen by dietitian during admission Seen by dietetic assistant | 55 (45.4) 33 (27.3) |
Nutrition support | Oral nutrition supplements Enteral/parenteral nutrition | 24 (19.8) 3 (2.5) |
Prescribed diet | High protein Regular Texture modified Other | 64 (52.9) 15 (12.4) 10 (8.3) 32 (26.4) |
Nutrition status 1 | Well nourished Mildly to moderately malnourished Severely malnourished | 11 (33.3) 17 (51.5) 5 (15.1) |
Theme | Sub-Theme | Description and Quotes |
---|---|---|
Using technology for nutrition screening | Easy to complete but prompts may be required | Patients found the e-MST straightforward and “easy to do” (P120). Most felt confident completing it and would do so again in future admissions. Patients said the e-MST posed a minimal burden and did not impact their day, as “you’ve got to do your dinners anyway” (P94). Some indicated a prompt may be needed for patients to complete it.
|
Enhancing technology usability for patients | Some patients said they faced no challenges in using the bedside computer, while others described issues they themselves faced, or perceived other patients may face when using the technology. Some thought age, unfamiliarity with technology, being acutely unwell, or conditions like poor motor control and low vision could be barriers to other patients completing the e-MST.
| |
Perceived benefits of electronic nutrition screening in healthcare | Several patients thought patient-led screening could benefit hospital staff by saving them time and providing information for care purposes. Some also thought it could help prompt care-related conversations that benefit patients.
| |
Patient perceptions of nutrition screening in hospital | Patient understanding and value of the MST | Patients had mixed understandings of the MST as a screening tool and thought providing more information would be helpful, including its purpose and scoring, interpreting the MST questions, and the impact of the survey results on their healthcare. Some patients understood the purpose of the MST while others wanted more clarity:
|
Personal context is important in nutrition risk screening | Patients spoke about the importance of their personal context and how this affected their interest in completing the e-MST. For example, one patient thought nutrition was “an issue in everyone’s life” (P121) and another “understood the context of [nutrition screening]” (P119) from working in aged care. Both these patients expressed appreciation for the screening tool and its value to health professionals. However, some patients thought the MST didn’t account for certain personal contexts such as the ability to access food and monitor their weight:
|
Model Input | Observed Current Practice 1 (N = 121) | Nurse-Led MST ≥2 (N = 121) | Patient-Led e-MST ≥2 (N = 121) |
---|---|---|---|
Referral pathway | |||
Patients requiring nurse input, n (%) | 121 (100) | 121 (100) | 41 (33.9) |
Nurse time per occasion of input, minutes | 1.2 | 1.2 | 2.3 |
Nurse cost per minute, AUD | $0.93 | $0.93 | $0.93 |
MST nurse cost, AUD | $134.24 | $134.24 | $87.38 |
Patients identified from additional dietetic-led screening 2, n (%) | 16 (13) | 5 (4) | 0 (0) |
Dietitian time per patient identified, minutes | 10 | 10 | 0 |
Dietitian cost per minute, AUD | $1.42 | $1.42 | $1.42 |
Cost for dietitian-identified patient, AUD | $227.20 | $50.00 | $ - |
Total cost of referral pathway, AUD | $361.44 | $134.24 | $87.38 |
Cost per patient of referral pathway, AUD | $2.99 | $1.11 | $0.72 |
Dietitian attendances | |||
Referrals, n | 33 | 33 3 | 33 |
Cost of dietitian attendance, AUD | $1698.66 | $1698.66 | $1698.66 |
Proportion of referrals inappropriate, % | 17.6% | 16.7% | 0.0% |
Estimated referrals inappropriate, n | 5.8 | 5.5 | - |
Dietitian time wasted per inappropriate referral (false positive MSTs), minutes | 14.17 | 14.17 | 14.17 |
Cost of inappropriate referrals, AUD | $117.16 | $110.65 | $ - |
Total cost, AUD | $2177.26 | $1943.55 | $1734.59 |
Cost per patient, AUD | $17.99 | $16.06 | $14.76 |
Incremental cost per patient, AUD | REF | −$1.93 | −$3.23 |
Malnourished patients per referral, % | 66.7% | 81.8% | 86.4% |
Estimated total number of malnourished patients, n | 22.0 | 27.0 | 28.5 |
Incremental number of malnourished patients, n | REF | 5.0 | 6.5 |
Incremental cost per additional malnourished patient attended, AUD | REF | −$0.39 | −$0.50 |
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Share and Cite
Roberts, S.; Marshall, A.P.; Bromiley, L.; Hopper, Z.; Byrnes, J.; Ball, L.; Collins, P.F.; Kelly, J. Patient-Led, Technology-Assisted Malnutrition Risk Screening in Hospital: A Feasibility Study. Nutrients 2024, 16, 1139. https://doi.org/10.3390/nu16081139
Roberts S, Marshall AP, Bromiley L, Hopper Z, Byrnes J, Ball L, Collins PF, Kelly J. Patient-Led, Technology-Assisted Malnutrition Risk Screening in Hospital: A Feasibility Study. Nutrients. 2024; 16(8):1139. https://doi.org/10.3390/nu16081139
Chicago/Turabian StyleRoberts, Shelley, Andrea P. Marshall, Leisa Bromiley, Zane Hopper, Joshua Byrnes, Lauren Ball, Peter F. Collins, and Jaimon Kelly. 2024. "Patient-Led, Technology-Assisted Malnutrition Risk Screening in Hospital: A Feasibility Study" Nutrients 16, no. 8: 1139. https://doi.org/10.3390/nu16081139
APA StyleRoberts, S., Marshall, A. P., Bromiley, L., Hopper, Z., Byrnes, J., Ball, L., Collins, P. F., & Kelly, J. (2024). Patient-Led, Technology-Assisted Malnutrition Risk Screening in Hospital: A Feasibility Study. Nutrients, 16(8), 1139. https://doi.org/10.3390/nu16081139