1. Introduction
Germany, like many EU nations, faces healthcare challenges due to an aging population and increasing multi-morbidity [
1,
2]. As of 2023, approximately 20% of the German population is over the age of 65, a figure projected to increase by 2050 [
3,
4]. The COVID-19 pandemic has further escalated the demand for health services, simultaneously highlighting the acute shortage of nursing staff [
5]. The nursing sector has started to struggle to fulfill the escalating care demands driven by demographic transformations, particularly in rural areas [
6,
7]. Additionally, the challenges will extend, as projections indicate that by 2023, Germany could face a shortfall of approximately 500,000 nurses [
6,
8]. This challenge is compounded by the need to manage rising health expenditures, prompting governmental plans to curtail funding for support staff [
9,
10]. Human support workers, in the form of transport and delivery services or care assistants, have a vital role but also face staff shortages and are limited due to additional costs for nursing wards [
11].
Current healthcare challenges regarding nurses’ health can be extended, which are demanding and lead to intentions to leave the profession [
12]. Transportation tasks, such as the transfer of patients and equipment, are commonplace in clinical settings [
13,
14,
15]. Nurses transfer patients more than 40 times during their shift, significantly contributing to nurses’ physical strain [
14]. As transportation is repetitive and includes heavy loads, musculoskeletal diseases and back pain are prevalent issues among nurses [
14].
The urgency to implement efficient technological solutions that relieve nurses’ burden, save costs, and augment capacities regarding the mentioned challenges becomes paramount [
16,
17]. Transportation tasks are widespread in nursing, reducing the time for direct patient care, and do not always need human execution. Among technical solutions, assistive robots promise to alleviate, support, and free-up capacity in repetitive clinic processes [
17,
18,
19,
20]. Robots can take over routine transportation tasks, such as lab specimens and patient forms, which ties up nursing staff and detracts from time devoted to patient care, treatment, and therapy [
21,
22].
Understanding the current state of nurse transportation tasks in rural clinics becomes critical in the nursing shortage. Assessing the user needs, e.g., transportation tasks, is needed to adapt technological support measures effectively and achieve the vision of smart hospitals [
23]. Despite the importance of analyzing transportation tasks, there is a notable lack of in-depth analysis regarding nursing transportation duties as emphasized in
Section 2. Furthermore, the interest in healthcare robotics is growing in the HCI community, even though many existing robots do not fully align with nurses’ needs, and existing research is focused on technical feasibility [
18,
23].
Therefore, we aim to bridge the gap between the user-centric development of robots, particularly in the unique context of the German nursing system. Our study contributes to the current research gap about clinical nursing transport tasks’ complexities, time allocation, and requirements. We provide the foundation for further research implementing user-focused robots to ease staff from everyday transportation tasks.
3. Methodology
Our study adopts a cross-sectional participatory observational design with two distinct data points, focusing on the transportation needs and execution processes of clinical nurses in rural clinics. This approach provides valuable contributions to addressing the research gap in this area. The first data point was collected through participatory observation conducted from 3 to 9 July 2023 in one rural clinic. A second, separate data point was gathered similarly in another rural clinic from 4 to 10 September 2023. This two-point cross-sectional method enables a comparative analysis of the practices and challenges in different rural healthcare settings
3.1. Objectives and Research Questions
We aimed to analyze nurses’ transportation tasks to enable a user-centric development of further assistive transport robots. We aimed to identify the most time-consuming, costly, and common transportation tasks. Furthermore, we identify the allocation and kinds of nursing transports. Our observational study answered the central question: “which transportation needs are undertaken by nurses in clinical settings, and what are their time allocations, requirements, and economic implications?”.
This includes the following subordinate research questions (RQs):
- RQ1:
Which items are transported, how often, and in which direction?
- RQ2:
How long does it take to move items, and which requirements exist?
- RQ3:
Which specific requirements for certain transportation need to be fulfilled?
- RQ4:
Do transportation tasks vary between different days, shifts, and locations?
- RQ5:
What is the economic perspective on clinical transportation tasks?
3.2. Inclusion and Exclusion Criteria
Our study focused on formal, professional nurses with completed training, working in non-intensive care wards of two rural hospitals in Northern Bavaria, Germany. The analysis included nurses actively working in geriatric and surgical units, providing a diverse perspective on transportation tasks. We included day-shift nurses and excluded night-shift nurses because fewer transports occur at nighttime, as in the pre-test.
Moreover, nurses in training or apprenticeship were not observed, ensuring a focus on experienced nursing practices. Furthermore, we excluded nursing support staff, medical staff (physicians, physician assistants), and other hospital employees involved in ancillary services, like kitchen, cleaning, and pharmacy, from our observation. Focusing on hospitals, we exclude other healthcare facilities, like long-term elderly care.
3.3. Study Setting and Sampling
We observed clinical nurses’ transportation tasks in two rural clinics of basic-, regular- and emergency care in Lower Bavaria, Germany. The observations were strategically scheduled: the first observation from 3 to 9 July 2023, in a geriatric nursing unit, and the second from 4 to 10 September 2023, in a surgical unit. These periods were chosen to provide a comprehensive overview of the transportation needs in different nursing contexts. Therefore, our study setting consists of …
- 1.
a geriatric nursing unit for the first observation period (30 mostly immobile patients with an average age of 65 mostly in 17 fully occupied rooms, 30 employees in the nursing staff rotating in a three-shift-system, and additionally one station secretary, three nursing trainees, and two interns),
- 2.
a surgical unit for the second observation (31 patients in 17 rooms capacity, occupied with 12 patients with an average age of 49 years, 28 employees in the nursing staff rotating in a three-shift system, 1 station secretary, 4 nursing trainees).
Both clinics, Arberlandklinik, Viechtach, shortened as VIE, and Kliniken Am Goldenen Steig, Freyung, abbreviated as FRG, are typical rural healthcare facilities in Germany, each employing over 1000 staff members and servicing around 40,000 patients annually. These facilities were integrated into our project “Smart Forest-5G Clinics” (
https://www.smartforest-5g.de, accessed on 10 January 2024), chosen for their representativeness of the typical rural healthcare environments across Bavaria.
The study population comprised fully trained day-shift nurses from both hospital wards. The average age of the staff in both clinics was 42 years. The day-time shifts in these clinics were divided into an early shift from 6:00 to 13:30 and a late shift from 13:30 to 21:00. The early and late shifts consisted of 4 nurses. One nurse was randomly selected and observed each shift. Nurses on duty during these shifts were chosen for observation through a random drawing process to ensure a diverse and unbiased representation of nursing practices and transportation dynamics within these rural healthcare settings.
3.4. Study Instrument (Android Observation Application)
Our data collection form was based on established literature. For measuring the transportation methods, we utilized the REFA-method [
26] and time and motion studies [
29,
31,
33,
34,
35]. Furthermore, we integrated findings from Fiedler et al. [
13] and Blay et al. [
15] about transportation in clinical nursing, visualized in
Table 1, to derive our observation categories. These clusters and associated categories were inspired by similar studies [
13,
15] in the field, ensuring relevance and comprehensiveness.
Table 2 also visualizes the clusters of transported goods in the last. For instance, ‘Non-Medical Supplies’ included tableware, hair dryers, and cushions, ‘Medical Supplies’ included wound dressings, diapers, and needles, and ‘Pharmacotherapy’ all items regarding medication, infusion, and transfusion.
Three preliminary pre-tests involving a total of six nurses were conducted to test the reliability of our survey. Feedback from these nurses led to revisions in the survey’s clarity, wording, and overall structure. Furthermore, these pilot tests allowed us to critically evaluate the instrument’s practical application, leading to a necessary reduction in variables for feasibility and effectiveness. For instance, we consolidated sub-items, such as transportation goods, into functional clusters that were confirmed during pre-tests.
Despite our modifications and limitations, described in
Section 5, it was confirmed that the survey instrument can effectively address the research questions. Our final study instrument included nominal and metrical variables, which were extended by the possibility of adding open-ended data. We used an Android app with a standardized protocol consisting of the variables shown in
Table 2. Our application had pre-set categories and allowed free text (open-ended data) for consistent data collection.
3.5. Data Collection and Annotation Process
We conducted a participatory observation over seven days in each rural clinic during typical weeks in July and September 2023, excluding public holidays. Observations covered the early (06:00–13:30) and late (13:30–21:00) shifts from Monday to Sunday. Each day, we focused on observing two randomly selected daytime nurses per clinic, using an Android app equipped with a standardized protocol, with the UI visualized in
Appendix B. Our approach allowed for precisely tracking nurses’ transportation start and end times.
A crucial aspect of our data collection was maintaining uniformity in observations and ensuring consistent conditions across all settings. Observers were trained and provided with a guide and glossary to support data collection. The glossary also contained information about the transported goods and their clusters, as shown in
Table 2. The app also included tooltips to clarify items for observers. All observations were anonymized through the random assignment of nurses. Observers followed the nurses at a safe distance, respecting the privacy of all individuals involved, and refrained from recording any personal data. They were instructed not to interact with nurses, visitors, or patients during observation periods to avoid distraction and bias during transportation. Furthermore, observers avoided entering patient rooms, as necessary data were obtained by noting items like incontinence materials and the time nurses left the rooms. As we used informed consent, information posters were displayed in the clinics to inform about the study, and a declaration of consent was given to all nurses.
3.6. Data Analysis
We utilized quantitative data analysis and a costs-benefit calculation based on the literature. First, our data were prepared for evaluation, including deleting incomplete values, performing plausibility checks, and transforming, i.e., summarizing necessary variables. To organize the data, we used Python Pandas. The evaluation of times was based on the REFA-Methodology [
48], with some adaptations to our needs according to
Table 3.
Our measurements began when a nurse took an item in their hand and ended once the item was handed over and the transport was completed. We evaluated the frequencies of all variables and utilized charts, histograms, scatter, and box plots to represent our results. In addition to the descriptive data analysis, we conducted a template analysis of all free-text comments. The free text was filtered and meticulously coded to ensure the integrity and relevance of our findings. After assessing the coded information, it became evident that the comments provided a summarizing overview and a deeper understanding of the data, complementing our quantitative analyses. Furthermore, with the factual transport time, visualized by
Table 3, we calculated the transport costs by considering the average hourly nursing wage and projected it for a whole year. The calculation is detailed under
Section 4.8.
4. Results
This section presents the results related to the transportation tasks within the two rural clinics in Germany. These outcomes were derived from a comprehensive participatory observation conducted over two distinct periods within 2023, aiming to shed light on the transportation tasks of clinical nurses during day shifts. Initially, we summarize the transportation needs, the duration, the medium, and the requirements for both clinics.
4.1. Overview of Transported Goods
During each daytime shift, one nurse was observed. A total of 1830 transports were recorded in both clinics for two weeks. The transport distribution is shown in
Table 4:
It becomes apparent that clinical nursing involves transporting a diverse range of goods. We have grouped these into 10 categories for clarity and ease of interpretation. As illustrated in
Table 4, Non-Medical Supplies emerged as the predominant category, making up nearly a third (27.05%) of all transported items. Medical Supplies closely trailed this, such as wound dressings, which represented 17.32% of the overall count. Pharmacotherapy formed another significant portion, amounting to 14.10%. Further, more specialized categories like medical devices accounted for 12.51%, and meals or drinks for 12.68%. Venturing into the less frequent items, which each represented less than 5% of the total, we observed documents (4.10%), patient transfer aids (3.99%), miscellaneous items (4.81%), patients (2.89%), and lab samples (0.55%). It is worth noting that the distribution of transported goods is inconsistent across rural clinics, Freyung (FRG) and Viechtach (VIE). There are more transportation tasks in the clinic of VIE, especially since there is more transportation in the category of non-medical supplies, with 338 cases, compared to FRG, with 157 cases. Furthermore, more meals and drinks are transported in FRG as in VIE.
4.2. Frequency of Locations
Table 5 provides the transportation start and endpoints. Six transports were canceled, explaining why the total numbers of start and end locations differ. The primary focus of transport is the corridor, patient rooms, and the station office. With 36.69%, the corridor is the most common starting location. A total of 27.95% of transports started further from the patient room and 25.75% from the station office. Other areas, having percentages under 5%, highlight that transport between places like the kitchen or the storage is less common. When observing the termination points, the patient room dominates with 50.30% and is followed by the corridor (21.70%). Furthermore, the station office again emerges as an important location, making up 8.91% of the end locations. Areas such as the Lounge and various miscellaneous locations, encompassing kiosks, diagnostics areas, and elevators, although constituting smaller percentages, point to specific and specialized transportation needs. In summary, transports focus on the corridor, patient rooms, and the station office.
4.3. Transport Duration Analysis
Another angle of understanding the efficiency and potential bottlenecks in transportation tasks is by assessing the duration taken for transports.
4.3.1. Cumulative Distribution of Total Transport Duration
In
Figure 1, the cumulative distribution of total transport duration (
), including all interruptions and required setup time, is illustrated through a histogram for all transported items. More than 90% of all transports were completed in under five minutes.
The mean transport duration is 1.82 min, with a standard deviation of 3.47 min. In total, 1% of transports finish in 4 s, while 10% are complete within 11 s and 25% within 20 s. The median is 0.70 min, signifying that half of the transports are concluded under that duration. Notably, even including the interruptions and setups, 90% of all transports are finished in less than 4.05 min. While the majority of transports demonstrate efficiency, some extremes stand out. Specifically, the longest 1% of transports (p99) reach up to 17.72 min. The maximum transport duration has extended up to 44.58 min. These outliers above the 99th percentile highlight the complexity of clinical nursing.
4.3.2. Setup Times
The setup time (
), referring to preparatory steps like disinfecting or turning on a system before and after initiating a transport, averages 0.31 min. While 25% of the transports (Q1) did not require any setup time, 75% of the transports (Q3) necessitated up to approximately 7 min. Many transports require minimal to no setup. The longest observed
was 18.88 min. As depicted in
Figure 2, patient transports, pharmacotherapy, and lab sample transports often necessitate preparations.
4.3.3. Interruptions during Transports
Analyzing interruptions () during transportation, we find an average of 0.74 min with a standard deviation of 2.49 min. Most transports are efficient: up to the median, meaning no interruptions exist. By Q3 (75%), rises to 0.25 min. However, extreme cases exist, with the most extended interruption being 35.17 min. Such delays beyond the 99th percentile highlight challenges in clinical nursing’s transportation, such as emergencies or equipment issues.
4.3.4. Transported Goods and Their Factual Transport Time
The factual transport time (
), the time without any interruptions and set-up, is important for understanding transportation efficiency.
Figure 3 showcases a box plot.
Patient transport and lab samples stand out among the items shown in the boxplot. Not only do they have a higher median factual transport time compared to other items, but they also exhibit a broader range in their distribution. This suggests that these two categories face more variability in transportation time. The extended duration for patient transport could be attributed to the inherent complexity and care required in moving patients. Similarly, transporting lab samples might involve specific protocols or detours, leading to longer transportation times. The median factual transport time () for most transported goods, including non-medical supplies, medical supplies, medical devices, pharmaceuticals, meals or drinks, patient transfer aids, and documents, falls under a minute. Moreover, even their interquartile ranges (Q1 to Q3) suggest a tight distribution, mainly concentrated within this under one-minute duration.
Contrastingly, patient transfers and lab samples stand out in the box plot. While predominantly registering under a one-and-a-half minute for their median times, these two categories have a notably wider spread in their box plot. Furthermore, the whiskers are wider, especially in patient transport, indicating greater variability in . Specifically, up to the Q3, patient and lab transports exhibit times ranging between two and three minutes.
4.4. Transport Durations over a Week
As demonstrated in
Figure 4, there’s consistency in the distribution of transports throughout the week. There is not any particular day where apparent anomalies occur regarding transport duration or frequency. Whether on weekdays or weekends, the transportation workflow maintains a steady pace throughout the observation period. At the beginning of the week, the duration and outliers in
are more comprehensive.
Delving into daily trends,
Figure 5 shows the spread of transports throughout the day. The data do not present any sharp spikes at specific hours. However, a mild surge in transport can be observed during the early morning hours between seven and eight o’clock and again in the late afternoon, from 6.30 to 8 a.m. These could be times when routine medical activities or shift changes necessitate more movement. Furthermore, another slight surge is in the late afternoon, from 5 to 7 p.m., which can be related to dinner. Apart from these periods, the transports are evenly distributed.
4.5. Share of Transport Mediums
Our analysis shows variations in the transport mediums across the clinics (
Table 6). The most prevalent medium was ’By Hand,’ accounting for 77.15% of all transports. Other transport mediums followed, including the Nursing Trolley (13.06%) and Tray (11.73%). Wheelchairs, beds, cardboard, and others constituted less than 7% combined.
As most items were transported by hand (77.15%), a detailed examination of this category sheds light on the nature of items and reasons for this preference. The most frequently hand-carried items were Non-Medical Supplies, with 328 cases (28.32%), and Medical Supplies at 263 cases (22.71%). Pharmacotherapy items were also prominently hand-carried, totaling 226 cases (19.52%). Meals or drinks and medical devices made up 160 (13.82%) and 156 (13.47%) cases, respectively. Less frequent hand-carried items included documents with 70 cases (6.05%), Miscellaneous items at 62 (5.35%), and patient transfer aids at 35 (3.02%). In 17 instances (1.47%), patients were “hand-carried” in the sense of being taken by the hand and led to their destinations. Lab samples were the least transported by hand, tallying at seven cases (0.60%).
4.6. Transportation Requirements
In 1291 (79.25%) of all transports, no specific requirements were noted. Collection was necessary in 4.73% of cases, while 4.30% needed nursing supervision during transport. Disinfection and observation of medication intake were required in 2.89% and 2.82% of transports, respectively. In 2.15%, patients needed general help taking drugs, food, or mobilization during transports. Bio-hazard precautions or isolation were needed in 1.41%. Less than 1% of the transports had other requirements, such as safety, weight considerations, urgency, labeling, elevator use, and temperature control.
4.7. Differences between the Clinics: Geriatric (VIE) vs. Surgery Unit (FRG)
Table 7 contrasts the top transported goods in each clinic. Viechtach (VIE) features a geriatric unit, whereas Freyung (FRG) operates a surgery unit, impacting transportation and patient mobility. Notably, FRG’s surgical unit sees more patient transports due to more frequent examinations. FRG’s geriatric unit transported fewer non-medical supplies (19.50%) compared to VIE’s 32.98%. Conversely, FRG had more meal or drink transports (20.87%) versus VIE’s 6.24%. Patient transports were more frequent in VIE (3.90%) than in FRG (1.61%). Moreover, lab transports were exclusive to VIE.
In addition, FRG has more prolonged interruptions than VIE, but VIE has extended setup times. Average transport duration is closely matched, but VIE displays a broader duration range. At the median for
, FRG’s transports are 0.47 min, slightly longer than VIE’s 0.42 min. Detailed time breakdowns are available in the
Appendix A and
Figure 4.
4.8. Transportation Cost Analysis
Using the direct transport time,
, which omits setup and interruption times, we analyzed the costs over a two-week observation period in two clinics, focusing on two nurses per daytime shift. As depicted in
Table 8, these observations revealed a total transportation cost of 514 €, corresponding to 24.73 h of work. It’s worth noting that for the calculation, the hourly rate of 20.79 € was derived from the German collective agreement TVÖD-P [
49], which sets a nurse’s gross wage at 3532 €, inclusive of 600 € for additional employer costs, such as social insurance. Our data, comprehensive for the day and late shifts with typically four nurses each, does not cover the night shift.
A portion of transport costs is attributed to the transport of ’meals or drinks’, taking up 4.81 h and accounting for approximately 99.96 € during the observation period. Given the clinic’s staffing structure, with an average of four nurses operational during each daytime shift, this translates to a monthly transport cost of 799.68 € solely for meals or drinks on the observed stations. When projected over a year, this single task accumulates an annual expense of around 9596.16 € across both clinics.
5. Discussion
Our study fills a critical gap in understanding transports in nursing [
27,
36], focusing on clinical nurses and analyzing their time use, requirements, and economic impacts.
5.1. Methodical Limitations
Our participatory observation method, while robust, is subject to certain limitations and potential biases. Our focus was primarily on clinical nurses, driven by higher wages and staffing deficits. Consequently, this narrowed lens did not encompass the activities of service support staff, who may play a significant role in transport tasks. Additionally, the inherent risk of observational studies, where participants may alter their behavior when they know they are being observed, remains a concern. As cited in [
50], the Hawthorne effect underscores this issue, and multiple observers’ involvement could potentially amplify it. We employed random participant selection to mitigate these biases and utilized a standardized, app-driven data collection method.
Furthermore, our method incorporated the REFA-Methodology [
48], initially designed for production and industry. While it sharpened our time measurements, its limitations might not perfectly align with modern healthcare dynamics, given its manufacturing roots and age. The study instrument is oriented around existing nursing transportation studies, like Fiedler et al. [
13] and Blay et al. [
15]. We adapted and needed to shorten the variables, so we clustered transported goods into groups. Therefore, our methodology did not allow for an in-depth examination of the specific types of items transported, which could have provided more granular insights into clinical transportation needs. While this would have been valuable, it was not practicable within the scope of our study due to logistical constraints and the need to maintain a feasible and manageable data collection process.
Furthermore, the validity and generalizability of our findings are limited by our study’s specific settings and short duration [
51]. Unique characteristics of our observation sites, such as FRG’s lower patient occupancy and the presence of interns, influenced our results. External factors, including the particularities of student internships and clinic-specific processes, may hinder the generalizability of our findings, indicating a need for broader research across diverse settings.
Despite these limitations, our study provides cost-effective and pragmatic insights into rural clinical transportation challenges, suggesting potential avenues for innovation, such as using transport robots and paving the way for further research.
5.2. Transportation Tasks and Durations
Our findings corroborate with prior research, identifying various clinical transport tasks, including medical supplies, non-medical equipment, patients, and medical waste [
13,
39,
40]. We have further identified transport categories, such as distributing food and drinks, which are not widely discussed in the existing literature. Transportations like patient transfers, likely due to their inherent complexity, consume more time in our study, aligning with the insights of Rosenberg et al. [
30], Blay et al. [
15], and Roche et al. [
35]. Nevertheless, it is limiting that we clustered primarily the transported goods, with the need for further studies to be more detailed.
Data from
Table 4 points out a divergent distribution of transports between our two observed clinics attributed to the unique wards. The dementia ward in VIE, for example, could lead to a high percentage (19.50%) of non-medical goods transports. This suggests a possibility that patients in VIE might have a higher dependency on nursing staff, necessitating more non-medical item transports. Conversely, the lower percentage in FRG could be due to its patients being more independent. These disparities underline the influence of the clinic’s structure and patient demographics on transportation tasks.
During our two-week study, we observed 24.73 h for transports for two daytime nurses. According to Lim et al. [
31], approximately 10.5% of nursing work time is dedicated to transportation tasks, such as transferring patients to diagnostics and supplying food and medicines. Our data indicate that nurses working 39 h per week spend 15.85% of their work time on observed transportation tasks, more than Lim et al. [
31] reports. Expanding on durations, our study offers a distinct perspective influenced by the REFA methodology, which differentiates between different time components. We highlight the specific durations but abstain from evaluating their efficiency or wasted potential. In summary, our findings resonate with observations on the time-intensive nature of drug distribution [
20,
41]. Furthermore, Hendrich et al. [
34] identified medical device transports and waste management as time-consuming, which we cannot confirm in detail for waste management because of missing subcategorization. Moreover, our observed time intensities for patient transfers align with reports of their inherent complexity from Rosenberg et al. [
30], Blay et al. [
15], and Roche et al. [
35]. Additionally, we identified other time-consuming transports, like food and drinks, which have not been discussed prior.
Figure 5 exhibits rhythmic patterns in transports, possibly tied to daily routines, like the checks and meal times. We found a slight surge in transport between 6:30 and 8 a.m. and 5 to 7 p.m., but apart from these peak hours, the consistent spread of transport events suggests a balanced demand for transport services throughout the day and the week. This might reflect an efficient scheduling and resource allocation mechanism within the clinics.
5.3. Mediums and Requirements
Table 6 highlights a reliance on manual transport linked to potential physical strain [
40]. Our data lacks specifics like item weight, which influences transport time [
40]. Moreover, similar to Westbrook et al. and Peter et al.’s findings, under 5% of all transport tasks involve direct patient interactions, additional care, or collection of items [
29,
36]. In summary, using robots for transport might also reduce physical strain for nurses and has hardly any special requirements in most cases.
5.4. Economical Implications and Assistive Robot Potential
Clinic transports impose economic consequences, corroborated by our study and Fiedler et al. [
13]. Our financial analysis is based on actual transport duration, accommodating factors such as disinfection and navigational challenges pertinent to robots.
Table 9 shows potential amortization, focusing on automating meal and beverage transports.
Utilizing cost-effective robots like Temi, priced at 5000 €, the investment can be recouped within a year. Projecting further, we calculated the costs for 5 years, presuming the robots’ operational lifespan adheres to German depreciation guidelines. Extending this projection over 5 years suggests more economic benefits. Still, the scientific community and manufacturers know just little about the lifespan of assistive robots in hospital settings, which necessitate the use of disinfection liquids that can probably harm robots, and the distances that robots need to travel can be high.
While our calculations provide a directional guideline, we hinge on the assumption of achieving full automation for meal and beverage transports. Our presumption might be overly simplified. Broadening the scope of robot tasks to encompass additional items or span various wards could enhance operational efficiencies but also necessitates comprehensive research. Considering different robots’ unique capabilities, limitations, and applications in clinical contexts leads to further research needs [
18,
43].
6. Conclusions
6.1. Implication for the Nursing Practice and Technicians
Our research highlights transportation as a common and time-consuming nursing task involving non-medical and medical items, notably meals and drinks. Key areas such as corridors, patient rooms, and station offices emerged as major transport nodes, suggesting these as optimal locations for robotic support. A notable 77.15% of transport tasks are manually executed, often involving short, repetitive trips, thereby contributing to the physical burden on nurses. The factual transport time for most items was under a minute, with patient transport and lab samples showing more variability.
We advocate for the widespread adoption of assistive robots to handle routine transportation tasks in healthcare settings, easing nurses’ workloads. It is necessary to monitor market trends to evaluate the impact of more accessible, cost-effective robotic solutions. Recent studies visualized in
Section 2 and discussions with robot manufacturers showed that the industry focuses more on our identified primary focus on food transportation [
43]. Our research confirms that food transport represents a significant cost factor and that the industry is on the right track with its developments. Some hospitals in metropolitan areas already employ robots for food delivery [
19]. Nevertheless, technicians should work on cost-effectiveness for widespread use in financially tight rural clinics. Furthermore, available products are either prototypes or are not specially designed to meet the complex needs of hospital wards, like disinfection and hygiene.
6.2. Further Research Directions
The rapidly evolving robotics industry, with new transport robots, should follow evidence-based product design, which alleviates nurses and is user-centered. For healthcare providers considering robot implementation, understanding the impact of hospital demands, such as disinfection and distance traversing, on repair frequency and maintenance costs is vital for accurate cost-benefit analysis and durability assessments in clinical settings. We need to know more about the product lifecycle and its usage.
Furthermore, research should continue to explore the transported goods in different hospital areas and potential synergies to use a robot in other wards to maximize utilization and obtain shorter amortization periods. We recommend initiating intervention studies to investigate how robots can efficiently transport food while identifying limitations. Different robots should be used and compared in those interventions regarding their benefits and barriers. Furthermore, during applied research by our project “Smart Forest-5G Clinics” and the scientific community, we should discover other outcomes connected with implementing assistive transport robots in nursing. This outcome of robots could include alleviating the nurse’s health strain, effects on nurses’ job satisfaction, and if robotics could positively affect the profession’s image. These are underrated topics that are vital in staff shortages and short retention periods in nursing.