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Nutrición Hospitalaria

versión On-line ISSN 1699-5198versión impresa ISSN 0212-1611

Nutr. Hosp. vol.39 no.4 Madrid jul./ago. 2022  Epub 31-Oct-2022

https://dx.doi.org/10.20960/nh.03983 

Original Papers

A novel nomogram based on the nutritional risk screening 2002 score to predict survival in hepatocellular carcinoma treated with transarterial chemoembolization

Un nuevo nomograma basado en el puntaje de detección de riesgo nutricional 2002 para predecir la supervivencia en el carcinoma hepatocelular tratado con quimioembolización transarterial

Xinxin Chen1 

1Nutrition Management Department. Xingtai People's Hospital. Xingtai, Hebei Province. People's Republic of China

Abstract

Objective:

transarterial chemoembolization (TACE) is one of the common treatments for hepatocellular carcinoma (HCC). Predicting prognosis for HCC patients who received TACE is challenging because of huge differences in outcome. At present, the Nutritional Risk Screening 2002 (NRS-2002) is widely used to screen nutritional risk in hospitalized patients, which has been confirmed to be related to prognosis. Here, the objective of this research is to construct a prognostic nomogram using the NRS-2002 score for HCC patients receiving TACE.

Methods:

we enrolled 359 HCC patients who received TACE at the Xingtai People's Hospital between January 2015 and December 2020. According to the preoperative NRS-2002 score, patients were divided into an NRS ≥ 3 group (n = 190; 52.9 %) and an NRS < 3 group (n = 167, 47.1 %). Meanwhile, variables associated with survival were analyzed by univariate and multivariate Cox regression. Beyond that, a nomogram incorporating independent variables was established. The concordance index (C-index) and calibration curves were used to assess the prediction performance of the nomogram.

Results:

the median survival of the NRS ≥ 3 group was significantly lower than that of the NRS < 3 group. As shown by multivariate analysis, in the Barcelona Clinic Liver Cancer stage an NRS-2002 score ≥ 3, γ-glutamyl transpeptidase, and alpha-fetoprotein were significantly associated with survival in HCC patients after TACE. In addition, the C-index was 0.708 (95 % confidence interval: 0.672-0.743), and the calibration curves showed a good consistency between the observed and predicted survivals at 1, 2, and 3 years, respectively.

Conclusions:

NRS-2002 ≥ 3 could identify high-risk patients with HCC who received TACE. The NRS-2002-based nomogram model had good prognostic prediction accuracy.

Keywords: Hepatocellular carcinoma; Transcatheter arterial chemoembolization; Nutritional risk; Nutritional risk screening 2002

Resumen

Objetivo:

la quimioembolización transarterial (TACE) es uno de los tratamientos comúnmente utilizados para el carcinoma hepatocelular (CHC). La predicción pronóstica en pacientes con CHC sometidos a TACE es un desafío debido a la gran variabilidad del resultado. La “Detección del riesgo nutricional 2002” (NRS-2002) se utiliza ampliamente en la actualidad para evaluar el riesgo nutricional de los pacientes hospitalizados y se ha demostrado que está relacionada con el pronóstico. Aquí, nuestro objetivo fue construir un nomograma pronóstico, utilizando la puntuación NRS-2002, para pacientes con HCC que reciben TACE.

Métodos:

reclutamos a 359 pacientes con CHC tratados con TACE en el Hospital Popular de Xingtai desde enero de 2015 hasta diciembre de 2020. Los pacientes se dividieron en un grupo NRS ≥ 3 (n = 190; 52,9 %) y un grupo NRS < 3 (n = 167, 47,1 %) según la puntuación NRS-2002 preoperatoria. Las variables asociadas con la supervivencia se analizaron mediante la regresión de Cox univariante y multivariante. Se estableció un nomograma que incorpora variables independientes. El rendimiento predictivo del nomograma se evaluó mediante el índice de concordancia (índice C) y la curva de calibración.

Resultados:

la mediana de supervivencia del grupo NRS ≥ 3 fue significativamente menor que la del grupo NRS < 3. El análisis multivariante mostró que el estadio del grupo de Clínica de Cáncer de Hígado de Barcelona, una puntuación NRS-2002 ≥ 3, la γ-glutamil transpeptidasa y la alfa-fetoproteína se asociaron significativamente con la supervivencia de los pacientes con CHC después de la TACE. El índice C fue de 0,708 (intervalo de confianza del 95 %: 0,672-0,743) y las curvas de calibración mostraron una buena concordancia entre las supervivencias observadas y las predichas a 1, 2 y 3 años.

Conclusiones:

la puntuación NRS-2002 ≥ 3 podría identificar a los pacientes con HCC de alto riesgo sometidos a TACE. El modelo de nomograma basado en la NRS-2002 tuvo una buena precisión de predicción pronóstica.

Palabras clave: Carcinoma hepatocelular; Quimioembolización arterial transcatéter; Riesgo nutricional; Detección de riesgo nutricional 2002

INTRODUCTION

Hepatocellular carcinoma (HCC) is one of the most common malignant tumors worldwide, and the second leading cause of malignant tumor-related death in men and developing countries (1). However, most HCC patients cannot undergo surgical resection or liver transplantation because of advanced disease at diagnosis (2). Transarterial chemoembolization (TACE), the first-line treatment for advanced HCC, has been widely used in clinical practice in recent years (3,4). However, patients treated with TACE can have very different prognoses (2,4). Therefore, it is critical to be able to identify those patients who have a better prognosis after TACE.

HCC patients often have pre-existing liver disease, especially decompensated cirrhosis, leading to different degrees of abnormal digestion and metabolism. It significantly increases their risk of malnutrition (4,5). Multiple studies have confirmed that there is a significant correlation between the preoperative nutritional status of cancer patients and their prognosis (6-8). The Nutritional Risk Screening 2002 (NRS-2002) was proposed by the European Society of Parenteral and Enteral Nutrition (ESPEN) (9). It is currently widely used to screen the nutritional risks of hospitalized patients, including patients with liver cirrhosis and liver cancer (10-14). The NRS-2002 is associated with recurrence and prognosis in HCC patients after resection (15). However, to the best of our knowledge, no studies have examined the correlation between the NRS-2002 score and the prognosis of HCC patients treated with TACE.

As one of the statistical prediction models, the nomogram includes various variables, from which the probability of a specific event in a patient can be obtained directly (16,17). A nomogram has the advantages of visually displaying various independent risk factors and a personalized prediction of patient survival (18,19). In recent years, with the increasing demand for individualized prognosis prediction for patients with malignant tumors or various chronic diseases, this model has been widely used (16-19). However, there is currently no nomogram model based on preoperative nutritional assessment to predict the prognosis of HCC patients receiving TACE. This study aimed to determine the correlation between nutritional status and prognosis, and construct a nomogram model to predict the overall survival of HCC patients after TACE.

METHODS

STUDY DESIGN AND PATIENTS

HCC patients who received conventional TACE as first-line therapy at the Xingtai People's Hospital from January 2015 to December 2020 were eligible for this retrospective study. The inclusion criteria were as follows: age > 18 years, meeting the diagnostic criteria for HCC, and no previous antitumor treatments. The exclusion criteria were as follows: other malignant tumors, NRS-2002 evaluation not performed before TACE, and severe heart, lung, kidney, or brain dysfunction. Finally, 359 HCC patients who received TACE were enrolled. All patients signed the relevant informed consent form before the start of the study, and the study was approved by the ethics committee of Xingtai People's Hospital.

ASSESSMENT OF NUTRITIONAL STATUS

The nutritional status assessment of all patients was completed within 24 hours after admission using the NRS-2002 assessment (7). The NRS-2002 assessment comprises a nutritional status-related score (0-3 points), a disease severity score (0-3 points), and an age score (≥ 70 years old, 1 point), with a total score of 0-7 points. A score ≥ 3 is considered to indicate nutritional risk. A score of < 3 is considered to indicate no nutritional risk. Patients were divided into a NRS ≥ 3 group and a NRS < 3 group based on their pretreatment NRS-2002 score.

TACE TREATMENT

All TACE procedures were carried out with the same group of interventional radiologists (with at least 10 years of experience) (20,21). First, the Seldinger method was used to puncture the femoral artery, and a superselective catheter was placed at the target vessel under digital subtraction angiography. After successful catheter placement, diagnostic hepatic angiography was performed to determine the location, size, and number of blood vessels supplying the liver tumor. The microguide wire catheter method was used to selectively intubate the nourishing blood vessel of the tumor. Under fluoroscopy monitoring, a slow bolus injection of chemotherapy drugs and iodized oil emulsion was administered for embolization. Chemotherapy drugs included epirubicin, oxaliplatin, and mitomycin. Finally, the proximal end of the tumor supply artery was embolized with gelatin sponge until the arterial blood flow was significantly reduced based on fluoroscopy. We adjusted drug doses according to tumor volume and blood supply, and used complete staining of the tumor as the standard to terminate embolism.

DATA COLLECTION AND FOLLOW-UP

The following clinical data were collected: age, gender, body mass index (BMI), comorbidities (hypertension, diabetes, and hepatitis B surface antigen [HBsAg] status), laboratory indicators (red blood cell count [RBC], hemoglobin [HGB], international normalized ratio [INR], glutamate aminotransferase [ALT], aspartate aminotransferase [AST], total bilirubin, albumin [ALB], alkaline phosphatase [ALP], γ-glutamyl transpeptidase [GGT], and creatinine [CREA)]), Child-Pugh classification of liver function (22), and tumor-related indicators (maximum tumor diameter, number of tumors, alpha-fetoprotein [AFP], and Barcelona Clinic Liver Cancer [BCLC] stage [2]).

All HCC patients were followed up by telephone every 3-6 months, and any prognosis-related information was recorded. The primary endpoint was overall survival (OS), which was defined as the time from treatment onset to death from any cause. The deadline for the follow-up was April 15, 2021.

STATISTICAL ANALYSIS

Categorical data are expressed as number of cases (percentage), and were compared using the chi-square test or Fisher's exact probability method. Quantitative variables are expressed as median (interquartile range), and were compared using the unpaired two-tailed Student's t-test or the Kruskal-Wallis test, as appropriate. Propensity score matching (PSM) was performed to minimize bias between the NRS ≥ 3 and NRS < 3 groups. The nearest neighbor matching method was selected, and the caliper value was set to 0.2. The two groups were matched at a 1:1 ratio. The Kaplan-Meier method was used to draw survival curves, and the log-rank test was used to compare survival between groups.

Univariate and multivariate Cox proportional hazard regression analyses were used to identify independent prognostic factors. Hazard ratios (HRs) were calculated, and the nomogram model was created accordingly. Prediction performances of the nomogram were assessed by the concordance index (C-index) and calibration curves. All data were processed using R software (version 4.1.0) and R packages such as “survival,” “matchIt,” and “rms.” A p-value < 0.05 indicated a statistically significant difference.

RESULTS

BASELINE CHARACTERISTICS

Of the 359 enrolled patients, 275 (76.6 %) were men, and their median age was 62 (55-68) years. According to the pretreatment NRS-2002 score, patients were divided into a NRS ≥ 3 group (n = 190, 52.9 %) and a NRS < 3 group (n = 169, 47.1 %) (Fig. 1). Age, BMI, HBsAg status, RBC, HGB, INR, AST, ALB, GGT, Child-Pugh classification, BCLC stage, number of tumors, and maximum tumor diameter were significantly different between the NRS ≥ 3 group and the NRS < 3 group. There was no significant difference between the two groups in sex, diabetes, hypertension, ALT, bilirubin, ALP, CREA, AFP status, or other indicators (Table I). After PSM, there was no significant difference in baseline data between the two groups (Table I).

Figure 1. Flow chart of the study population (HCC: hepatocellular carcinoma; NRS: nutrition risk screening; TACE: transarterial chemoembolization). 

Table I. Comparisons of characteristics between the NRS ≥ 3 and NRS < 3 groups before and after propensity score matching (PSM). 

*Values are mean ± standard deviation or median (interquartile range). AFP: alpha-fetoprotein; ALP: alkaline phosphatase; ALT: alanine aminotransferase; AST: aspartate transaminase; BMI: body mass index; GGT: γ-glutamyl transpeptidase; HbsAg: hepatitis B surface antigen; NRS: nutrition risk screening; INR: international normalized ratio; RBC: red blood cell.

SURVIVAL ANALYSIS

The mortality rate of HCC patients in the NRS ≥ 3 group was significantly higher than that of patients in the NRS < 3 group (63.2 % vs. 43.8 %; p < 0.001) (Table II). Accordingly, the median OS of the NRS ≥ 3 group was significantly lower than that of the NRS < 3 group (12.0 months vs. 39 months; p < 0.001) (Table II).

Table II. Comparisons of long-term oncologic outcomes between the NRS ≥ 3 and NRS < 3 groups before and after propensity score matching (PSM). 

*Values are median (interquartile range);

Values are median and 95 % confidence interval. NRS: nutrition risk screening; OS: overall survival.

The 1-, 2-, and 3-year survival rates of the NRS ≥ 3 group were 50.7 %, 34.2 %, and 24.5 %, respectively, which were significantly lower than those of the NRS < 3 group (77.8 %, 62.1 %, and 52.9 %, respectively; p < 0.001) (Table II). After PSM, the prognosis of patients in the NRS ≥ 3 group remained significantly worse than that of patients in the NRS < 3 group, and the results were similar to those before PSM (Table II). Figure 2 shows a comparison of the survival curves of the two groups.

Figure 2. Kaplan-Meier curves of overall survival before (A) and after (B) propensity score matching for comparisons between the NRS ≥ 3 and NRS < 3 groups (NRS: nutrition risk screening; TACE: transarterial chemoembolization). 

UNIVARIATE AND MULTIVARIATE COX ANALYSIS

Using p < 0.1 as cutoff value, the univariate Cox analysis showed that BCLC stage, NRS-2002 score, BMI, ALB, ALP, GGT, RBC, HGB, INR, and AFP were variables significantly related to survival in HCC patients after TACE (Table III). We incorporated those significant indicators into the multivariate Cox regression analysis, and the results showed that BCLC stage (HR = 2.219, 95 % confidence interval [CI]: 1.669-2.951), NRS-2002 score (HR = 1.880, 95 % CI: 1.334-2.648), GGT (HR = 1.001, 95 % CI: 1.000-1.002), and AFP (HR = 1.001, 95 % CI: 1.000-1.001) were independent risk factors for OS (p < 0.05) (Table III).

Table III. Univariate and multivariate Cox regression analyses in predicting overall survival. 

*Variables found to be significant at p < 0.1 in the univariate analysis were entered into the multivariate Cox regression analysis. AFP: alpha-fetoprotein; ALP: alkaline phosphatase; ALT: alanine aminotransferase; AST: aspartate transaminase; BMI: body mass index; CI: confidence interval; GGT: γ-glutamyl transpeptidase; HbsAg: hepatitis B surface antigen; HR: hazard ratio; NRS: nutrition risk screening; INR: international normalized ratio; MV: multivariable; NS: not significant; RBC: red blood cell; UV: univariate.

NOMOGRAM FOR PREDICTING OS

According to the results of the multivariate Cox regression analysis, BCLC stage, NRS-2002 score, GGT, and AFP were incorporated into the nomogram models of 1-, 2-, and 3-year OS (Fig. 3). With all enrolled patients as the internal validation cohort, the C-index of the nomogram model was 0.708 (95 % CI: 0.672-0.743). Figure 4 shows the calibration curves of OS in the nomogram model at 1, 2, and 3 years, indicating that the nomogram-predicted survival had a high consistency with the observed survival.

Figure 3. Nomogram for predicting 1-, 2-, and 3-year overall survival (AFP: alpha-fetoprotein; BCLC: Barcelona clinical liver cancer; GGT: γ-glutamyl transpeptidase; NRS: nutrition risk screening). 

Figure 4. Calibration curves for 1- (A), 2- (B), and 3-year (C) overall survival (OS: overall survival). 

DISCUSSION

The results of this study indicate that the NRS-2002 score is an independent prognostic factor for OS in HCC patients treated with TACE. We established a prognostic nomogram model based on independent risk factors, including the NRS-2002 score and BCLC stage, to predict OS at 1, 2, and 3 years in HCC patients undergoing TACE. This model can help to accurately determine the prognosis of patients, which will allow us to screen high-risk patients before TACE.

Increased clinical evidence shows that preoperative malnutrition is one of the determinants of poor prognosis for many cancers, including liver cancer (6-8). The ESPEN guidelines recommend nutritional assessment for all cancer patients (23,24). Clinically, BMI is often selected as an indicator to screen patients for risk of malnutrition. However, for patients with liver cancer developing from cirrhosis and patients with advanced liver cancer, it might be difficult to determine the true nutritional status using BMI alone (25). Since these patients often suffered from ascites and BMI can be impacted by sodium and water retention. The study by Schute et al. also showed that BMI was not an independent screening method for the evaluation of malnutrition in patients with liver cancer (25-27). The NRS-2002 score has the advantages of simplicity, ease of use, non-invasiveness, and high patient acceptance. ESPEN suggested the NRS-2002 score as an effective nutritional assessment tool for hospitalized patients (9). Our study used the NRS-2002 screening strategy and found that 52.9 % of patients had nutritional risk before surgery. This may be related to the fact that most HCC patients have liver fibrosis and cirrhosis, which may lead to a higher prevalence of malnutrition.

Many studies have confirmed that the NRS-2002 score is related to prognosis in cancer patients (14,15,28). A recent study showed that cancer patients infected with severe acute respiratory syndrome coronavirus 2 with an NRS-2002 score ≥ 3 may have a higher risk of death (28). Thomas and colleagues enrolled 203 patients undergoing elective hepatectomy for malignant tumors (14), and their study confirmed that an NRS-2002 score ≥ 4 was a predictor of 90-day mortality after elective hepatectomy. Our study confirmed that an NRS-2002 score ≥ 3 was an independent prognostic risk factor for patients receiving TACE for HCC.

This study also confirmed that BCLC stage, GGT, and AFP were independent risk factors for death in HCC patients. The BCLC staging system is a clinical staging system for liver cancer that specifically includes assessment of tumor burden, liver function, and patient physical status (2). Multiple clinical studies have confirmed that BCLC stage has a strong ability to classify and predict the prognosis of liver cancer patients (29,30). However, BCLC stage does not incorporate the following indicators, such as nutritional status, short-term liver function, or tumor markers. Multiple studies have shown that GGT and AFP play an important role in predicting the prognosis of HCC patients (31-34). In this study, we constructed a nomogram based on the NSR-2002 score, BCLC stage, AFP status, and GGT, which performed well in predicting the OS of HCC patients undergoing TACE.

However, this study had some limitations: First, this study is a single-center study and lacks an external cohort to verify the accuracy of the model. Second, this study did not collect information on other antitumor treatments during follow-up and only analyzed the relationship between various indicators before the first treatment and the final prognosis, which may have affected the results of this study. Finally, prospective studies are needed to further verify the role of the NRS-2002 score in the prognosis of HCC patients and whether timely preoperative nutritional intervention can bring survival benefits.

In conclusion, we constructed a nomogram based on the NRS-2002 score that could effectively predict the survival of HCC patients after TACE. Our nomogram showed good predictive performance, so it can be used to predict the prognosis of HCC patients and to screen high-risk patients.

REFERENCES

1. Torre LA, Bray F, Siegel RL, Ferlay J, Lortet-Tieulent J, Jemal A. Global cancer statistics, 2012. CA Cancer J Clin 2015;65:87-108. DOI:10.3322/caac.21262 [ Links ]

2. EASL Clinical Practice Guidelines: Management of hepatocellular carcinoma. J Hepatol 2018;69:182-236. DOI:10.1016/j.jhep.2018.03.019 [ Links ]

3. Lencioni R, de Baere T, Soulen MC, Rilling WS, Geschwind JF. Lipiodol transarterial chemoembolization for hepatocellular carcinoma: A systematic review of efficacy and safety data. Hepatology 2016;64:106-16. DOI:10.1002/hep.28453 [ Links ]

4. Villanueva A. Hepatocellular Carcinoma. N Engl J Med 2019;380:1450-62. DOI:10.1056/NEJMra1713263 [ Links ]

5. Tsochatzis EAP, Bosch JP, Burroughs AKP. Liver cirrhosis. The Lancet (British edition) 2014;383:1749-61. DOI:10.1016/S0140-6736(14)60121-5 [ Links ]

6. Cao J, Xu H, Li W, Guo Z, Lin Y, Shi Y, et al. Nutritional assessment and risk factors associated to malnutrition in patients with esophageal cancer. Curr Probl Cancer 2021;45:100638. DOI:10.1016/j.currproblcancer.2020.100638 [ Links ]

7. Zhang Z, Wan Z, Zhu Y, Zhang L, Zhang L, Wan H. Prevalence of malnutrition comparing NRS2002, MUST, and PG-SGA with the GLIM criteria in adults with cancer: A multi-center study. Nutrition 2021;83:111072. DOI:10.1016/j.nut.2020.111072 [ Links ]

8. Zhang X, Tang M, Zhang Q, Zhang K, Guo Z, Xu H, et al. The GLIM criteria as an effective tool for nutrition assessment and survival prediction in older adult cancer patients. Clin Nutr 2021;40:1224-32. DOI:10.1016/j.clnu.2020.08.004 [ Links ]

9. Kondrup J. Nutritional risk screening (NRS 2002): a new method based on an analysis of controlled clinical trials. Clin Nutr 2003;22:321-36. DOI:10.1016/S0261-5614(02)00214-5 [ Links ]

10. Wu Y, Zhu Y, Feng Y, Wang R, Yao N, Zhang M, et al. Royal Free Hospital-Nutritional Prioritizing Tool improves the prediction of malnutrition risk outcomes in liver cirrhosis patients compared with Nutritional Risk Screening 2002. Br J Nutr 2020;124:1293-302. DOI:10.1017/S0007114520002366 [ Links ]

11. Kollar D, Benedek-Toth Z, Drozgyik A, Molnar FT, Olah A. Perioperative nutritional state as a surgical risk in oncologic patients. Orv Hetil 2021;162:504-13. [ Links ]

12. Knudsen AW, Naver A, Bisgaard K, Nordgaard-Lassen I, Becker U, Krag A, et al. Nutrition impact symptoms, handgrip strength and nutritional risk in hospitalized patients with gastroenterological and liver diseases. Scand J Gastroenterol 2015;50:1191-8. DOI:10.3109/00365521.2015.1028994 [ Links ]

13. Wang Z, Xu J, Song G, Pang M, Guo B, Xu X, et al. Nutritional status and screening tools to detect nutritional risk in hospitalized patients with hepatic echinococcosis. Parasite 2020;27:74. DOI:10.1051/parasite/2020071 [ Links ]

14. Zacharias T, Ferreira N. Nutritional risk screening 2002 and ASA score predict mortality after elective liver resection for malignancy. Arch Med Sci 2017;13:361-9. DOI:10.5114/aoms.2017.65273 [ Links ]

15. Chua DW, Koh YX, Liew YX, Chan CY, Lee SY, Cheow PC, et al. Pre-operative predictors of early recurrence/mortality including the role of inflammatory indices in patients undergoing partial hepatectomy for spontaneously ruptured hepatocellular carcinoma. J Surg Oncol 2018;118:1227-36. DOI:10.1002/jso.25281 [ Links ]

16. Iasonos A, Schrag D, Raj GV, Panageas KS. How To Build and Interpret a Nomogram for Cancer Prognosis. J Clin Oncol 2008;26:1364-1370. DOI:10.1200/JCO.2007.12.9791 [ Links ]

17. Wang J, Li Z, Liao Y, Li J, Dong H, Peng H, et al. Prediction of Survival and Analysis of Prognostic Factors for Patients With Combined Hepatocellular Carcinoma and Cholangiocarcinoma: A Population-Based Study. Front Oncol 2021;11:686972. DOI:10.3389/fonc.2021.686972 [ Links ]

18. El SM, Ahmed T, Varey A, Elias SG, Witkamp AJ, Sigurdsson V, et al. Development and Validation of Nomograms to Predict Local, Regional, and Distant Recurrence in Patients With Thin (T1) Melanomas. J Clin Oncol 2021;39:1243-52. DOI:10.1200/JCO.20.02446 [ Links ]

19. Ding ZY, Li GX, Chen L, Shu C, Song J, Wang W, et al. Association of liver abnormalities with in-hospital mortality in patients with COVID-19. J Hepatol 2021;74:1295-302. DOI:10.1016/j.jhep.2020.12.012 [ Links ]

20. Gaba RC, Lewandowski RJ, Hickey R, Baerlocher MO, Cohen EI, Dariushnia SR, et al. Transcatheter Therapy for Hepatic Malignancy: Standardization of Terminology and Reporting Criteria. J Vasc Interv Radiol 2016;27:457-73. DOI:10.1016/j.jvir.2015.12.752 [ Links ]

21. Gaba RC, Lokken RP, Hickey RM, Lipnik AJ, Lewandowski RJ, Salem R, et al. Quality Improvement Guidelines for Transarterial Chemoembolization and Embolization of Hepatic Malignancy. J Vasc Interv Radiol 2017;28:1210-23. DOI:10.1016/j.jvir.2017.04.025 [ Links ]

22. Child CG, Turcotte JG. Surgery and portal hypertension. Major Probl Clin Surg 1964;1:1-85. [ Links ]

23. Cederholm T, Bosaeus I, Barazzoni R, Bauer J, Van Gossum A, Klek S, et al. Diagnostic criteria for malnutrition -An ESPEN Consensus Statement. Clin Nutr 2015;34:335-40. DOI:10.1016/j.clnu.2015.03.001 [ Links ]

24. Arends J, Baracos V, Bertz H, Bozzetti F, Calder PC, Deutz N, et al. ESPEN expert group recommendations for action against cancer-related malnutrition. Clin Nutr 2017;36:1187-96. DOI:10.1016/j.clnu.2017.06.017 [ Links ]

25. Schutte K, Tippelt B, Schulz C, Rohl FW, Feneberg A, Seidensticker R, et al. Malnutrition is a prognostic factor in patients with hepatocellular carcinoma (HCC). Clin Nutr 2015;34:1122-7. DOI:10.1016/j.clnu.2014.11.007 [ Links ]

26. Chen ZY, Gao C, Ye T, Zuo XZ, Wang GH, Xu XS, et al. Association between nutritional risk and routine clinical laboratory measurements and adverse outcomes: a prospective study in hospitalized patients of Wuhan Tongji Hospital. Eur J Clin Nutr 2015;69:552-7. DOI:10.1038/ejcn.2014.239 [ Links ]

27. Efthymiou A, Hersberger L, Reber E, Schonenberger KA, Kagi-Braun N, Tribolet P, et al. Nutritional risk is a predictor for long-term mortality: 5-Year follow-up of the EFFORT trial. Clin Nutr 2021;40:1546-54. DOI:10.1016/j.clnu.2021.02.032 [ Links ]

28. Liang J, Jin G, Liu T, Wen J, Li G, Chen L, et al. Clinical characteristics and risk factors for mortality in cancer patients with COVID-19. Front Med 2021;15:264-74. DOI:10.1007/s11684-021-0845-6 [ Links ]

29. Tournoux-Facon C, Paoletti X, Barbare JC, Bouche O, Rougier P, Dahan L, et al. Development and validation of a new prognostic score of death for patients with hepatocellular carcinoma in palliative setting. J Hepatol 2011;54:108-14. DOI:10.1016/j.jhep.2010.06.015 [ Links ]

30. Guglielmi A, Ruzzenente A, Pachera S, Valdegamberi A, Sandri M, D'Onofrio M, et al. Comparison of Seven Staging Systems in Cirrhotic Patients With Hepatocellular Carcinoma in a Cohort of Patients Who Underwent Radiofrequency Ablation With Complete Response. The American Journal of Gastroenterology 2008;103:597-604. DOI:10.1111/j.1572-0241.2007.01604.x [ Links ]

31. Xue J, Cao Z, Cheng Y, Wang J, Liu Y, Yang R, et al. Acetylation of alpha-fetoprotein promotes hepatocellular carcinoma progression. Cancer Lett 2020;471:12-26. DOI:10.1016/j.canlet.2019.11.043 [ Links ]

32. Zhong CQ, Zhang XP, Ma N, Zhang EB, Li JJ, Jiang YB, et al. FABP4 suppresses proliferation and invasion of hepatocellular carcinoma cells and predicts a poor prognosis for hepatocellular carcinoma. Cancer Med 2018;7:2629-40. DOI:10.1002/cam4.1511 [ Links ]

33. Audureau E, Carrat F, Layese R, Cagnot C, Asselah T, Guyader D, et al. Personalized surveillance for hepatocellular carcinoma in cirrhosis - using machine learning adapted to HCV status. J Hepatol 2020;73:1434-45. DOI:10.1016/j.jhep.2020.05.052 [ Links ]

34. Wang X, Mao M, He Z, Zhang L, Li H, Lin J, et al. Development and Validation of a Prognostic Nomogram in AFP-negative hepatocellular carcinoma. Int J Biol Sci 2019;15:221-8. DOI:10.7150/ijbs.2∐ [ Links ]

Ethical responsibility:all patients signed the relevant informed consent form before the start of the study, and the study was approved by the ethics committee of the Xingtai People's Hospital and in accordance with the World Medical Association and the Helsinki Declaration (https://www.wma.net/en/30publications/10policies/b3/).

Chen X. A novel nomogram based on the nutritional risk screening 2002 score to predict survival in hepatocellular carcinoma treated with transarterial chemoembolization. Nutr Hosp 2022;39(4):835-842

Received: December 21, 2021; Accepted: March 29, 2022

Correspondence: Xinxin Chen. Nutrition Management Department. Xingtai People's Hospital. No. 16 Hongxing Street. Xiangdu District. Xingtai, Hebei Province. 054001 People´s Republic of China. e-mail: chenxinxinxt@163.com

Conflicts of interest:

the author declared none regarding financial or personal relationships.

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