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Article

Why We Should Look at Dinner Plates: Diet Changes in Cancer Patients

1
Institute for Diagnostic and Interventional Neuroradiology, Hannover Medical School, 30625 Hannover, Germany
2
Department of Radiation Therapy and Radiation Oncology, University Hospital Göttingen, 37075 Göttingen, Germany
3
Department of Otolaryngology, Head Neck Surgery, Südharz Hospital, 99734 Nordhausen, Germany
4
Department of Hematology and Medical Oncology, University Hospital, Robert-Koch-Straße 40, 37075 Göttingen, Germany
*
Author to whom correspondence should be addressed.
Curr. Oncol. 2023, 30(3), 2715-2728; https://doi.org/10.3390/curroncol30030205
Submission received: 16 January 2023 / Revised: 19 February 2023 / Accepted: 21 February 2023 / Published: 23 February 2023
(This article belongs to the Special Issue Nutritional Assessment and Management of Cancer Patients)

Abstract

:
Objective: Malnutrition is often underestimated in the context of cancer therapy: the dietary trends initiated by patients after diagnosis are usually neither known to nor evaluated by the medical staff. Here, we propose a combined screening instrument evaluating malnutrition and dietary trends. Methods: The validated screening tool NRS-2002 was combined with a four-item questionnaire assessing whether (1) patients preferred certain foods, (2) avoided certain foods, (3) used dietary supplements or followed a special diet since the time of cancer diagnosis. The screening tool was routinely used by cancer patients in the daily practice of three oncological departments. The presented analysis was performed retrospectively and anonymized. Results: Overall, 102 cancer patients undergoing systemic therapy (CP), 97 undergoing radiation therapy (RP), and 36 head–neck cancer patients (HNP) were screened. The CP cohort showed a higher rate of malnutrition (50.00%) than the HNP (28.13%) or RP (26.80%) cohort. Overall, diet changes were observed in 33.63% of all patients. Avoiding meat, stimulants, or hard and edgy food was often mentioned in free text answers, while patients reported a preference for fruit and vegetables. Nutritional supplements were used by 28.76% of the patients. While dietary changes were common, only 6.64% of the patients mentioned adhering to a specific cancer diet. Conclusion: Malnutrition is still underestimated nowadays. Diet trends, especially avoiding certain foods, are common in cancer patients, while adhering to a specific cancer diet is an exception. Diet trends should be assessed and addressed to avoid or aggravate malnutrition.

1. Introduction

Malnutrition is a common problem in cancer patients, often based on unintentional weight loss due to inadequate nutrient intake or uptake [1]. Nutritional status of patients differs between cancer entities and is also influenced by side-effects of oncological therapy [2]. Approximately 15–40% suffer from malnutrition at the disease’s onset, and the prevalence further increases up to 40–80% in patients undergoing oncological therapy [3].
Malnutrition affects several aspects of cancer treatment and outcome. Malnourished patients show an increase in treatment toxicity and a worse overall survival compared to well-nourished patients undergoing the same treatment [2]. Nutritional problems leading (in the worst case) up to cancer cachexia should be viewed as a continuum, starting from initial signs and symptoms of anorexia to cachexia or even refractory cachexia [4]. It is well known that the efficacy and impact of nutritional interventions are related to the timing of support, with the best results obtained with early intervention or prehabilitation [5,6].
Accordingly, it is important to regularly screen cancer patients for malnutrition during the various phases of treatment and the disease. Nutritional status is fluid and changes overtime. Not only cancer entity, as mentioned above, but also tumor stage, treatment type and setting, and concomitant diseases influence the patient’s nutritional needs. This argues for the necessity to continuously assess nutritional status [2]. Several standardized tools have been established for malnutrition screening. The European Society for Clinical Nutrition and Metabolism suggests to use the Malnutrition Screening Tool (MUST), the Nutritional Risk Screening (NRS-2002), or the Mini Nutritional Assessment [7]. The scored Patient-Generated Subjective Global Assessment (PG SGA) tool offers a time-intensive instrument, which was validated for tumor patients [8]. Nevertheless, it is not been established in the clinical practice. So, the current ESPEN practical guidelines commonly endorse to regularly evaluate nutritional intake, weight changes, and BMI at the time of cancer diagnosis and argue for subsequent reevaluations during cancer treatment [9].
While cancer and oncological treatment may lead to malnutrition [2], we should also consider the patients themselves. A small cross-sectional study in Germany revealed that up to 70% of the patients surveyed had or planned to change their diet. These dietary changes themselves may have also an effect on (mal)nutrition [10]. This argues to not only assess for malnutrition but also dietary changes. We recently proposed a short questionnaire to detect cancer diets [11]. We propose to combine the latter with the Appendix A NRS-2002 [12] and present here a cohort of 235 cancer patients assessed for both malnutrition and dietary changes.

2. Materials and Methods

Patients suffering from a solid or hemato-oncology cancer were enrolled in a non-interventional, anonymous, cross-sectional, retrospective study. Patients were routinely screened at the time of admission to inpatient care as a part of the clinical (admission) routine. The following departments participated: Institute of Radiation Oncology and Radiation Therapy of the University Medical Center Göttingen, Department for Hematology and Medical Oncology of the University Medical Center Göttingen, and the Department of Otorhinolarnygology of the Südharz Hospital in Nordhausen between September 2021 and June 2022. The retrospective analysis of data was approved by the local ethics committee of the University Medical Center (approval number: 22/6/22).
All included patients were screened with the NRS2002 and a four-item questionnaire proposed to identify dietary changes in cancer patients [11,12]. The NRS-2002 is a validated tool which offers a pre-screen, evaluating general low nutritional intake, weight loss, low BMI, or disease severity. In case of a positive pre-screen, the actual screening combines a more detailed assessment of weight loss/nutritional intake and disease severity and age [10]. The four-item questionnaire includes the following questions: (1) “Do you dispense or avoid specific food?”, (2) “Do you prefer specific food?”, (3) “Do you take additional supplements?”, and (4) “Do you follow a specific diet strategy?”. Patients are asked to answer if changes in nutritional behavior occurred after getting the diagnosis of cancer [11]. “Dietary changes” were defined as changes (avoidance/preference) in consuming specific foods, while a “specific cancer diet” was defined as the conscious decision to follow a specific dietary regimen.
If patients answered with “yes” concerning questions of avoiding or preferring certain foods, such as additional supplements or specific diet strategies, free text answers were written down. The free text answers of the patients concerning nutritional changes, cancer diets, or nutritional supplements were retrieved from questionnaires and translated into English. Answers were further summarized in categories (e.g., “red meat” and “beef” were summarized as “meat”). Each answer was considered equally. Instead of pie diagrams, we chose to draw word clouds to depict recurring main topics of patients. Word clouds were drawn using the free online software https://www.wortwolken.com/ (accessed on 9 January 2023). The larger the words are presented in each word cloud, the more often this specific answer was given by patients.
Additional data on patients’ gender, cancer entity, and age were evaluated. When available, albumin and C-reactive protein (CRP) data were evaluated to calculate the modified Glasgow prognosis score (mGPS) [13]. Data were analyzed using an Excel Spreadsheet (Excel 2013) and GraphPad Prism (GraphPad Software, Version 8.0). Cohorts of patients were both analyzed separately by cohort. All cohorts were pooled for entity-specific subgroup analysis to reach a sufficient sample size for statistical analysis. If patient numbers of a single entity were not sufficient for subgroup analysis, single entities were summarized as an entity group: hematological malignant (lymphoma, acute myeloid leukemia, multiple myeloma, myeloproliferative neoplasia, chronic lymphatic leukemia, myelodysplastic syndrome, and chronic monocytic leukemia), hematology benign (anemia, idiopathic thrombocytopenic purpura, and others), lung cancer (non-small cell lung cancer, small cell lung cancer, and others), head–neck cancer (larynx carcinoma, oropharynx carcinoma, hypopharynx carcinoma, nasopharynx carcinoma, and others), other gynecological cancers (cervical and vulva carcinoma), uroonclogy (prostate carcinoma, urothelial carcinoma, and renal carcinoma), and upper gastrointestinal tract (esophagus carcinoma and others).
Due to the sample size, Fisher’s Exact test instead of Chi-Square test was chosen for analyzing independence of dichotomous parameters. Pearson’s r was applied for correlation analysis. Patients with a positive pre-screen (NRS2002) were included for correlation analysis. We a priori planned to test for correlation between the NRS-2002 score (numerical values) and the albumin, C-reactive protein, or mGPS. A p-value < 0.05 was considered significant for the statistical tests applied.

3. Results

3.1. Malnutrition Is Common amongst Cancer Patients

Overall, we were able to pool data from three cohorts: the radiation cohort comprised 97 patients; the hematology/medical oncology cohort, 102 patients; and head–neck cohort, 36 patients. A total of 235 patients were included for data analysis. Of those, 144 identified as male and 91 as female. Median age was 65.64 years (range 29.43–88.35 years). We also stratified for cancer entities (Table 1).
Overall, more than 50% of the patients (131/235) included showed positive results in pre-screening and subsequently underwent the main screening of the NRS2002 tool. Here, 86 patients suffering from malnutrition were identified. Taken together, we observed malnutrition in 36.60% (86/235) of all patients. Subgroup analysis (Table 2) was possible for the following five groups: breast cancer, hematology (malignant), head–neck cancer, lung cancer, and urooncology. Malnutrition rates were: 11.76% (2/17, breast cancer), 48.44% (31/64, hematology-malign), 31.82% (14/44, head neck cancer), 43.60% (17/39, lung cancer), and 47.06% (8/17, urooncology). Compared to the whole cohort, patients suffering from malignant hematological neoplasia showed significantly higher malnutrition rates (Fisher’s exact test, p = 0.033, Table 2).
We observed a trend towards lower albumin levels in these patients (Pearson’s r = −0.218, p = 0.071), while higher CRP levels were associated with a higher NRS2002 score (Pearson’s r = 0.223, p = 0.064). No significant correlation was found between NRS2002 and mGPS (Pearson’s r = 0.108, p = 0.376).

3.2. Diet Changes Are Common amongst Cancer Patients, Not Specific Cancer Diets

Only a minority of our patients followed a specific (cancer) diet: 6.64% (15/226 patients). Two items of our cancer diet questionnaire assessed whether patients avoided or preferred certain foods after cancer was diagnosed. A total of 33.63% (76/226) of the patients changed their nutritional behavior by either avoiding (27.43%, 62/226 patients) or preferring (20.80%, 47/226 patients) certain foods. Stratification showed that overall diet changes were similar between entities. However, patients with malignant hematological neoplasia significantly more often preferred certain foods (Fisher’s exact test, p = 0.017) than other cancer patients, and head–neck cancer patients tended to avoid specific foods more often (Fisher’s exact test, p = 0.089).
Overall, most patients avoided meat products (38.46%, 30/78 answers), stimulants (16.77%, 13/78 answers), edgy or hard foods (11.54%, 11/78 answers), and sugar/carbohydrates (11.54%, 11/78 answers). Only a minority avoided milk products (6.41%, 5/78 answers), spicy/sour foods (5.13%, 4/78 answers), or others (10.26%, 8/78 answers).
Amongst preferred food were fruits (25.00%, 23/92 answers), vegetables (25.00%, 23/92 answers), and carbohydrates (16.30%, 15/92 answers). Less commonly preferred foods were milk products (6.52%, 6/92 answers) and fish/meat products (6.52%, 6/92 answers); A total of 20.65% of foods (19/92 answers) was subsumed as “other”. Overall, we observed a subgroup of patients with food preferences showing an adaption towards mucositis or dysphagia (17.39%, 16/92 answers, categorized as “dysphagia nutrition”).
Supplements were used by 28.76% (65/226) of the patients. Here, we observed significantly higher user rates amongst breast cancer patients (70.59%, 12/17 patients; Fisher’s exact test, p = 0.002). In contrast, head–neck cancer patients had the lowest user rates within our cohort (11.90%, 5/42 patients; Fisher’s exact test, p = 0.001). For data concerning different entities and cohorts, refer to Table 3 and Table 4.
Most commonly used supplements were vitamins (50.35%, 72/143 answers) and micronutrients (32.17%, 46/143 answers). Amino acids/proteins (3.50%, 5/143 answers) and fatty acids (2.80%, 4/143 answers) were less commonly used. As vitamins and micronutrients were the most commonly used supplements, we differentiated the answers. Overall, patients used the following vitamins: vitamin D (23.01%, 26/113 answers), vitamin B (including vitamin B12, vitamin B6, “vitamin B complex” preparations; 14.16%, 16/113 answers), vitamin C (8.85%, 10/113 answers), or others (14.16%, 16/113 answers). Concerning micronutrients, patients used magnesium (18.58%, 21/113 answers), selenium (7.08%, 8/113 answers), iron (6.19%, 7/113 answers), zinc (4.42%, 5/113 answers), or others (3.54%, 4/113 answers).
The foods standing out as the most often preferred were “fruits”, “potatoes”, “mashed potatoes”, “soup”, or “no hard foods” (Figure 1).
The latter three may hint towards dysphagia and adaptation towards side-effects in patients. Patients avoided mostly “meat” or “sausages and cold cuts”, “sugar”, “alcohol”, “bread”, and “hard foods” (Figure 2).
Here again, our patients’ answers may hint towards dysphagia (hard foods) and a reduced protein uptake (less meat). Answers on what diet changes happen after being diagnosed with cancer may offer insight on the causes of malnutrition. Amongst the supplements, vitamin D, vitamin B12, vitamin C, and magnesium are the most often used substances (Figure 3).

4. Discussion

Since 2006, the worldwide Nutrition Day is an established benchmark program analyzing the role of nutrition in clinical practice of the participating health care systems. In 2021, 11% of the participating German hospitals did not screen for malnutrition, another 8% used visual assessment, 30% used BMI or weighing, and only 32% used the application of a screening tool for malnutrition [14]. Units treating cancer patients mainly considered nutritional treatment “when the patients asked” or at a weight loss of >10%. Less than the half of all cancer care units (46%) routinely recognized the need for nutritional treatment [14]. These data stand in contrast to the current ESPEN recommendations to routinely screen cancer patients’ nutritional intake, weight changes, and BMI at disease onset and to subsequently reevaluate nutritional status during cancer treatment [9]. The ESPEN suggests several different validated screening tools to detect malnutrition or patients at risk of developing malnutrition such as the PG-SGA, NRS-2002, MUST, or, in the elderly, the Mini Nutritional Assessment (MNA) [4]. The MUST was developed with the aim of community use, keeping in mind that here serious confounders of the effects of undernutrition are relatively rare. In contrast, the NRS-2002 focuses on detecting undernutrition or the risk of developing undernutrition in an in-patient setting and therefore assesses not only the nutritional components, such as the MUST, but also the disease severity [15]. The PG-SGA has been previously validated for cancer patients [4]. The high diagnostic performance of the PG-SGA in cancer patients [16] comes unfortunately at the cost of the time required for screening. This makes the PG-SGA difficult to integrate into daily clinical routine. Considering the latter and that the NRS-2002 is predominantly used in German hospitals [14], we decided to apply this screening tool in our cross-sectional study.
The Global Leadership Initiative on Malnutrition (GLIM) established the “GLIM criteria” to ensure a well-defined, common definition of malnutrition in 2016. Amongst these are non-volitional weight loss, low BMI, reduced muscle mass, decreased food intake or assimilation, and inflammation or disease burden [17]. The NRS-2002 is valuable tool to assess for a majority of these criteria. However, neither NRS-2002 nor the GLIM criteria are able to give information on dietary changes of patients, which may also have an impact on weight-loss, food intake, or assimilation. Similar information will be received by using the PG SGA as a shortened screening instrument. Adding four items [11] to our nutritional screening, asking whether patients avoided or preferred certain foods from the time of cancer diagnosis, used micronutrients, or even followed a specific (cancer) diet, adds valuable information to the patients’ history.
We know that malnutrition affects up to 75% of cancer patients. The prevalence and resulting variation is determined by cancer-related (type, stage, and treatment), demographic (age), and social factors [2]. Overall, we used our modified screening tool to survey 235 patients. Half of all the patients showed a positive pre-screen and were referred to in-depth screening. In total we observed a rate of 36.60%, which is within the range of the published data [2,18]. Similar to previous studies [18,19,20,21], we observed different rates of malnutrition between cancer entities from 11.76% in breast cancer patients to 48.40% in patients with hematological neoplasia.
Difference in malnutrition rates between entities—ranging in our cohort from 11.76% in breast cancer patients to 48.44% in patients with hematological neoplasia—is not an uncommon phenomenon. Malnutrition rates of lung (43.60%) and head–neck cancer (31.82%) in our study were similar to the previous data [20,21,22,23,24]. For patients with hematological neoplasia, the malnutrition rate in our study was higher than the data found in the literature [18,19,24,25]. Our higher rate might be explained by the facts that the three studies screening inpatients [18,19,24] did not use a screening tool but information on BMI and weight loss to assess for malnutrition and that [25] applied the PG-SGA on a cohort of (fitter) out-patients.
Overall, our data shows the high risk and prevalence of malnutrition in specific groups of patients. This is not surprising as cancer therapy differs between entities and show different patterns of side effects, be it locoregional impairments (e.g., due to radiation or surgery) or side effects of systemic therapy (e.g., anorexia, oral discomfort) [26,27]; these may influence the development of malnutrition. Further, we should consider that malnutrition could also be influenced by tumor-induced activation of inflammatory pathways, which then may cause anorexia, altered metabolism, and involuntary loss of lean and fat mass, eventually leading to cachexia [28,29,30]. Very recently mass spectrometric analysis of blood sera even showed an entity of specific metabolomics profile in patients with upper gastrointestinal cancer [31]. Similar to these results, our study supports the previously published concept that each cancer entity is characterized by an entity-specific risk of accompanying malnutrition [2]. Oncologists should consider this entity-specific risk as malnutrition and cachexia are strong prognostic markers for unfavorable clinical outcomes [32]. Overall, this demonstrates the necessity to pay special attention to vulnerable subgroups as early as possible. Our data argue for paying increased attention towards the prognostic impact of malnutrition and low muscle mass on those undergoing treatment of hematological neoplasia, lung, or head–neck cancer and on patients suffering from urooncological neoplasia.
While activation of inflammation pathways especially characterizes cachexia [28,29,30], we did not observe a significant association of C-reactive protein with malnutrition. Similarly, albumin status did not correlate with the results of the NRS-2002. This result fits with the analysis of a recent review that argues to consider both laboratory parameters as potential prognostic markers for overall survival but not for malnutrition [33].
Laboratory parameters as well anthropometric data do not offer insights in dietetic behavior of cancer patients. However, the latter may have a direct influence on (developing) malnutrition. The usefulness or also the harm caused by adhering to a specific cancer diet is a controversy discussed in the literature [34,35,36]. However, the community is aware that patients show interest in specific cancer diets that diverges from the official dietary guidelines of, for example, the American Cancer Society or the American Institute for Cancer Research/World Cancer Research Fund [35]. Despite the knowledge about patients’ interest in cancer diets, there is no tool to screen for adherence to a specific diet. Neither the NRS-2002 nor the MUST catch shifts in our patients’ dietary behavior. Both tools only register malnutrition, which might be a subsequent consequence of adhering to a specific diet. Therefore, our group proposed a short four-item questionnaire to assess for both specific cancer diets and dietary changes/intake of nutritional supplements [11]. Data on users of specific cancer diets are, to our knowledge, not available. Zick et al. proposed that the rate of patients using complementary and alternative medicine (CAM) might correspond with the rate of patients adhering to specific dietary regimen [35]. As 40–90% of cancer patients use CAM [37,38,39,40], one would expect high rates of patients following a specific diet. However, only 6.64% of our cohort adhered to a specific diet. This low number might be explained by (1) the popularity of cancer diets is largely overestimated and (2) the rate might have been higher if our cohort had included more breast cancer patients, who are known to be more interested in CAM [39,41,42]. Summarizing, the low rate of patients using specific cancer diets argues for analyzing diet changes. Those are subtler, but may also have an impact on nutritional status (e.g., on protein intake if patients avoid meat without replacing proteins through alternative sources). We know that cancer patients often change or plan to adapt their dietary behavior [10,43]. Studies also showed that dietary changes of patients are not necessarily in line with the official dietary recommendations [35,43], and this may be, therefore, potentially an underlying cause of developing malnutrition. Dietary changes involve both avoiding and preferring certain foods. While another smaller German study described that up to 70% of surveyed out-patients changed or planned to change their diet [10], we observed that only a third of the patients in our cohort reported dietary changes. By comparing the data between [10] and our study, we may however appreciate common, recurring topics amongst patients: e.g., a higher intake of fruits and vegetables, eating less meat, or avoiding sugar or carbohydrates. Our survey also offers a new, previously underrated insight—a small group of patients declared avoiding hard or edgy food. This insofar is interesting as this uncovers that dietary changes are not always due to the motivations of benefitting health or actively contributing to therapy [10] but are also an adaptation to current needs or impairments (e.g., not eating hard foods when suffering from oral discomfort). Our data shows that the presence of specific cancer diets is overestimated and the pitfalls of dietary changes are underestimated. Screening for malnutrition using established tools like the NRS-2002 should be complemented by taking patients’ nutritional history assessing patterns of preference and avoidance. Our short four-item questionnaire offers a fast option for screening and recognizing patients that may require further counseling or nutritional intervention. Additionally, our fourth question on usage of nutritional supplements offers additional information to the medical staff and enables them to counsel patients, whether supplement intake can have negative effects on cancer therapy (e.g., vitamin E and radiation therapy in head–neck cancer [44]).
Overall, our results confirm that patients develop an awareness of their own diet and adapt their dietary behavior. A needs-based, individualized assessment of the nutritional status is necessary for individual counseling and intervention. Unfortunately, the actual attention given to nutritional status is far from the standard required in oncology management [45].

Limitations

We present a retrospective cohort study with 235 patients only, undergoing either systemic (chemo-) therapy or radiation therapy. All cancer entities were included. Subgroup analysis was only possible for five entities, and even here, especially the numbers for patients with breast cancer and urooncological neoplasia were relatively small, which may have led to over- or underestimating rates of malnutrition and also dietary trends in these subgroups. Data analysis was only descriptive; therefore, we did not consider adjusting for multiple testing.
Our screening tool is reductive and gives only an input for detailed counselling. Impact factors as surgery, irradiated fields, or GI diseases were not asked. The screening tool does not substitute any individual assessment and counselling.
Furthermore, the questionnaire was used for patients under therapy. So, we have no sufficient information for longtime trends in cancer survivors. Nutritional trends and specific diets would be interesting terms in follow-up investigations too. Subgroup analysis of entities gives us first impressions on which patient groups are more prone to changing their diet or using supplements. Data of subgroup analysis however should be interpreted carefully due to a, sometimes, small case number.

5. Conclusions

The spectrum and extent of malnutrition in oncological patients varies depending on the cancer entity. The NRS-2002 is a good tool to recognize malnourished patients; however, dietary trends and changes are not considered by established screening tools.
Our four-item questionnaire is able to detect such nutritional trends, showing that the importance and prevalence of patients adhering to specific cancer diets is overestimated and the relevance of dietary trends and their potential influence on malnutrition are underrated. Therefore, we argue for adding a short screening of dietary trends to the standardized screening for malnutrition, which then offers a common ground for personalized counseling and intervention.

Author Contributions

Conceptualization, J.B. (Judith Büntzel), J.B. (Jens Büntzel) and K.D.; methodology, J.B. (Judith Büntzel); formal analysis, J.B. (Judith Büntzel); investigation, J.B. (Judith Büntzel), J.B. (Jens Büntzel), K.D. and L.W.; data curation, J.B. (Judith Büntzel), J.B. (Jens Büntzel) and K.D.; writing—original draft preparation, J.B. (Judith Büntzel) and K.D.; writing—review and editing, J.B. (Judith Büntzel) and J.B. (Jens Büntzel); visualization, J.B. (Judith Büntzel); supervision, J.B. (Jens Büntzel). All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

The project was approved by the local ethics committee of the University Medical Center (approval number: 22/6/22).

Informed Consent Statement

Patient consent was waived due to the anonymous, retrospective analysis of data.

Data Availability Statement

The data presented in this study are available on request from the corresponding author.

Acknowledgments

We thank Stefan Rieken, Andrea Hille, and Raphael Koch for supporting this project.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Screening tool combining NRS-2002 and the authors’ four-item questionnaire (German).
NRS2002 (Nach Nach Kondrup J et al., Clinical Nutrition 2003; 22: 415–421 [12] )
Vorscreening
Ist der Body Mass Index < 20,5 kg/m2?
Hat der Patient die letzten 3 Monate an Gewicht verlorenx
War die Nahrungszufuhr in der letzten Woche vermindert?
Ist der Patient schwer erkrankt (z. B. Intensivtherapie)?
Screening
Störung des ErnährungszustandesPunkte+KrankheitsschwerePunkte
Keine0Keine0
Mild
Gewichtsverlust > 5% in 3 Monaten oder Nahrungszufuhr < 50–75% des Bedarfs in der Vorwoche
1Mild
Schenkelhalsfraktur, chronische Erkrankung mit Komplikationen, Krebsleiden
1
Mäßig
Gewichtsverlust > 5% in 2 Monaten oder BMI 18,5–20,5 kg/m2 und reduzierter Allgemeinzustand oder Nahrungszufuhr 20–25% des Bedarfs in der Vorwoche
2Mild
Große Bauchchirurgie, Schlaganfall, Pneumonie, hämatologische Krebserkrankung
2
Schwer
Gewichtsverlust >5% in 1 Monat oder BMI < 18,5 kg/m2 und reduzierter Allgemeinzustand oder Nahrungszufuhr 0–25% des Bedarfs in der Vorwoche
3Schwer
Kopfverletzung, Knochenmark-transplantation, Intensivpflichtige Patienten
3
+1 Punkt, wenn Alter 70 Jahre
3 PunkteRisiko für Malnutrition liegt vor, Erstellung eines Ernährungsplans
< 3 Punktewöchentlich Screening wiederholen
Haben Sie Ihre Ernährungsgewohnheiten verändert, seitdem Sie von Ihrer Krebsdiagnose wissen?
JaNein
Verzichten oder vermeiden Sie bestimme Nahrungsmittel?JANEINBevor Sie mit einer Krebsdiöt beginnen, sprechen Sie bitte mit Ihrer/m HausärztIn oder behandelnde/n OnkologIn
Bevorzugen Sie bestimmte Nahrungsmittel?JANEIN
Nehmen Sie Nahrungsergänzungsmittel ein?JANEIN
Folgen Sie besonderen Ernährungshinweise/Diätplänen?JANEIN

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Figure 1. Word cloud depicting patients’ free text answers showing preferences towards fruit, vegetables, and soft foods such as mashed potatoes or soup.
Figure 1. Word cloud depicting patients’ free text answers showing preferences towards fruit, vegetables, and soft foods such as mashed potatoes or soup.
Curroncol 30 00205 g001
Figure 2. Word cloud depicting patients’ free text answers showing that patients especially avoided meat, hard and edgy foods, and sugar.
Figure 2. Word cloud depicting patients’ free text answers showing that patients especially avoided meat, hard and edgy foods, and sugar.
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Figure 3. Word cloud depicting patients’ free text answers concerning use of nutritional supplements. Vitamins such as vitamin D or B12 and micronutrients such as magnesium were popular.
Figure 3. Word cloud depicting patients’ free text answers concerning use of nutritional supplements. Vitamins such as vitamin D or B12 and micronutrients such as magnesium were popular.
Curroncol 30 00205 g003
Table 1. Clinical characteristics.
Table 1. Clinical characteristics.
Total 235
GenderMale144
Female91
AgeMedian (range) [years]65.64 [29.43–88.35]
CohortRadiation97
Hema/Onco102
Head–neck36
EntityBreast17
Other gynecological6
Urooncology17
Head–neck46
Lung39
Colorectal8
Upper gastrointestinal tract9
Cancer of unknown primary4
Hematology malignant64
Hematology benign10
Other15
Table 2. Malnutrition in cancer patients assessed using the NRS2002.
Table 2. Malnutrition in cancer patients assessed using the NRS2002.
EntityPre-Screen Negative [N]Pre-Screen Positive
[N]
p-Value
Breast1340.0093
All91127
Hematology malignant27370.7685
All7794
Head–neck24200.1338
All80111
Lung16230.7257
All88108
Urooncology5120.3106
All99119
EntityNRS2002 < 3
[N]
NRS2002 ≥ 3
[N]
p-Value
Breast220.5829
All3584
Hematology malignant6310.0326
All3155
Head–neck6141.0000
All3172
Lung6170.8023
All3169
Urooncology480.7516
All3378
Significant p-values were depicted in bold.
Table 3. Diet changes: subgroup analysis of entities. Each sub-group was compared against all other cases.
Table 3. Diet changes: subgroup analysis of entities. Each sub-group was compared against all other cases.
EntityDiet Change: YesDiet Change: Nop-Value
Breast4130.4352
Others71137
Hematology malignant25380.2721
Others51112
Head–neck18260.2874
Others58124
Lung10290.2698
Others66121
Urooncology4130.4352
Others71137
Do You Prefer Specific Food?
EntityPrefer Foods: YesPrefer Foods: Nop-Value
Breast2150.5354
Others45164
Hematology malignant20430.0169
Others27136
Head–neck11330.5345
Others36146
Lung7320.8284
Others40147
Urooncology1160.1328
Others46161
Do You Dispense or Avoid Specific Food?
EntityAvoid Foods: YesAvoid Foods: Nop-Value
Breast4131.000
Others58151
Hematology malignant17461.000
Others45118
Head–neck17270.0889
Others45137
Lung9300.8307
Others43164
Urooncology4131.000
Others58151
Do You Take Additional Supplements?
EntitySupplement UseNo Supplement Usep-Value
Breast1250.0021
Others61138
Hematology malignant20630.7527
Others53100
Head–neck5380.0012
Others67105
Lung12270.7121
Others61116
Urooncology3140.1856
Others70129
Significant p-values were depicted in bold.
Table 4. Diet changes und supplement use in cancer patients.
Table 4. Diet changes und supplement use in cancer patients.
CohortTotal
[N]
Any Diet Change [N]Preference [N]Avoidance
[N]
Supplements [N]
All23576476265
Radiation971461125
Hema/Onco10245323536
Head–Neck36179164
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Döring, K.; Wiechers, L.; Büntzel, J.; Büntzel, J. Why We Should Look at Dinner Plates: Diet Changes in Cancer Patients. Curr. Oncol. 2023, 30, 2715-2728. https://doi.org/10.3390/curroncol30030205

AMA Style

Döring K, Wiechers L, Büntzel J, Büntzel J. Why We Should Look at Dinner Plates: Diet Changes in Cancer Patients. Current Oncology. 2023; 30(3):2715-2728. https://doi.org/10.3390/curroncol30030205

Chicago/Turabian Style

Döring, Katja, Lara Wiechers, Jens Büntzel, and Judith Büntzel. 2023. "Why We Should Look at Dinner Plates: Diet Changes in Cancer Patients" Current Oncology 30, no. 3: 2715-2728. https://doi.org/10.3390/curroncol30030205

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