scholarly journals Development of a Score Predicting Survival after Palliative Reirradiation

2014 ◽  
Vol 2014 ◽  
pp. 1-7 ◽  
Author(s):  
Carsten Nieder ◽  
Nicolaus Andratschke ◽  
Kent Angelo ◽  
Ellinor Haukland ◽  
Anca L. Grosu

Purpose. To develop a prognostic model for predicting survival after palliative reirradiation (PR).Methods and Materials. We analyzed all 87 PR courses administered at a dedicated palliative radiotherapy facility between 20.06.2007 (opening) and 31.12.2009. Uni- and multivariate survival analyses were performed, the previously published survival prediction score (SPS) was evaluated, and a PR-specific prognostic score was calculated.Results. In multivariate analysis, four parameters significantly influenced survival: performance status, use of steroids, presence of liver metastases, and pleural effusion. Based on these parameters, a 4-tiered score was developed. Median survival was 24.5 months for the favorable group, 9.7 and 2.8 months for the two intermediate groups, and 1.1 months for the unfavorable group (P=0.019for comparison between the two favorable groups andP≤0.002for all other pair-wise comparisons). All patients in the unfavorable group died within 2 months.Conclusion. The performance of PR-specific score was promising and might facilitate identification of patients who survive long enough to benefit from PR. It should be validated in independent patient groups, ideally from several institutions and countries.

Blood ◽  
2012 ◽  
Vol 120 (21) ◽  
pp. 3803-3803
Author(s):  
Fernando Ramos ◽  
Carmen Pedro ◽  
Jose-Maria Garcia-Ruiz-de-Morales ◽  
Eva Barragan ◽  
Raquel de Paz ◽  
...  

Abstract Abstract 3803 A revised form of the International Prognostic Scoring System (IPSS-R) has recently been derived from a huge retrospective patient series (Greenberg et al, 2012), and a biologically upgraded version (IPSS-R “molecular”) is being worked out by the same group. The aim of this study was to evaluate the potential additive contribution of patient-related, as well as readily accessible peripheral blood disease-related prognosticators, to the IPSS-R prediction capability for estimating overall survival (OS) and progression into acute myeloid leukemia (AML) in MDS patients. Methods: We prospectively recruited 266 MDS patients (Pts), from June 2006 to June 2010, in eight GESMD sites. The study was approved by the IRB at each study site and all Pts gave written informed consent. Cytological diagnosis and cytogenetic analysis followed standard operating procedures of the GESMD, ISCN guidelines and Schanz's categorization. Sixty-six Pts were excluded (MDS not confirmed 3, secondary MDS 6, CMML 40, lack of a valid karyotype 14 – w/o mitoses 10, not attempted 4-, duplicate 1, consent revocation 1). Finally 200 primary MDS cases (125 M/75 F; median age 76, range 31–91) were classified according to WHO-2008 (RC 11, RARS 13, RCMD 101, RAEB-1 30, RAEB-2 24, 5q- syndrome 15, hypoplastic MDS 1, unclassifiable 5), followed up until June 2012 (median follow-up 2.6 years, range 0.06–6.3) and categorized according to IPSS-R (Very Low 50, Low 80, Intermediate 33, High 25 and Very High 12). Fifty-five Pts received disease-modifying therapeutic strategies (DMTS) such as azacitidine (38), intensive chemotherapy w/o allo-BMT (17; in 6 Pts after AZA), or allo-BMT (13; in 7 after intensive chemotherapy). Forty-two Pts (21%) progressed into AML, 87 (43.5%) died and 13 (6.5%) were lost to follow-up. Median OS was 4.2 years. Age, comorbidity (as measured by Lee et al, 2006), performance status (ECOG), transfusion-dependence (according to Malcovati), serum LDH at diagnosis, ferritin, beta2-microglobulin, albumin, erythropoietin, plasma soluble p53-protein and interleukin-10 levels (ELISA), as well as peripheral blood WT1 gene expression (real-time PCR) were analyzed by testing the change in likelihood-ratio and the Akaike's information criterion (AIC) in Cox models after adding each individual covariate to IPSS-R. The increased discriminating power of the expanded prognostic model over that of IPSS-R alone was evaluated by the Harrell's C index and the R2explained variation. Replicability of the expanded prognostic model was tested by bootstrap re-sampling (1000 samples). Results: Addition of age (continuous) and ECOG (cutoff ≥2) to IPSS-R significantly improved the model's prognostic power, as measured by the likelihood ratio test and the AIC, as well as the discriminating power (Harrell's C increased from 0.70 to 0.75). Interestingly, addition of IL10 (cutoff ≥4.0 pg/mL) further improved the predictive power and reduced the residual variance (R2increased from 0.23 to 0.50). IL10 plasma levels were directly correlated with ferritin and transfusion dependence, and inversely correlated with hemoglobin. Bootstrap re-sampling predicted a replicability in eventual external validation series of 100%, 73%, 38% and 51%, respectively, for the covariates IPSS-R, age, ECOG and IL10. The IPSS-R category was the only predictor of progression into AML. Adjustment of the expanded prognostic model for exposure to DMTS, evaluated as a time-dependent covariate, had no relevant effect on the model's predictive ability. Conclusion: Patient's age, ECOG and plasma levels of IL10 at diagnosis add further information to the IPSS-R risk category in the prognostication of patients with MDS. As suggested by Greenberg et al. in their paper, our study confirms that some covariates not yet included in the IPSS-R may be of additional help for predicting the ultimate fate of MDS patients. Disclosures: No relevant conflicts of interest to declare.


2003 ◽  
Vol 21 (12) ◽  
pp. 2294-2298 ◽  
Author(s):  
Chee Kiat Tan ◽  
Ngai Moh Law ◽  
Han Seong Ng ◽  
David Machin

Purpose: More than 80% of hepatocellular carcinomas (HCCs) worldwide occur in developing countries, especially in Asia. It often presents at an advanced stage beyond treatment. In this circumstance, a simple prognostic model is useful. Previous prognostic models require radiologic and laboratory investigations that are not readily available in developing countries. Our aim is to formulate and then validate a simple clinical prognostic model for HCC in an Asian population using only clinical parameters and with serum alpha-fetoprotein (AFP) as the sole laboratory test. Patients and Methods: Cox regression modeling was performed on several clinical parameters and serum AFP level in 397 patients with HCC who received only supportive care in Singapore. A later group of 324 HCC patients from an Asia-Pacific–wide randomized trial was then used to validate the model. Results: Ascites, physical performance status, and serum AFP were independently predictive of survival. Cox analysis yielded a simple score based on these three variables that categorizes patients into low-, medium-, and high-risk groups with 6-month survivals of 43%, 21%, and 5%, respectively. The prospective validation data provided corresponding estimates of 33%, 15%, and 3% and give confirmation of the utility of the simple model. Conclusion: We have formulated and prospectively validated a simple prognostic score for untreated HCC that only requires a clinical evaluation for ascites and physical performance status and measurement of serum AFP. This simple model is particularly apt for developing country circumstances and can also be used to select patients for treatment trials.


2006 ◽  
Vol 24 (18_suppl) ◽  
pp. 1531-1531 ◽  
Author(s):  
L. E. Abrey ◽  
L. Benporat ◽  
K. S. Panageas ◽  
J. Yahalom ◽  
L. M. Deangelis

1531 Background: Increasingly there is a need to develop a simple prognostic score that can be used in the analysis and design of PCNSL studies as well as for clinical management. Recently the IELSG published a 3 group prognostic model incorporating patient age, performance status, serum LDH, location of brain lesions and CSF total protein; however, only 105 of their 378 patients had all of the variables available to develop this score. Methods: We analyzed 338 patients (median age 60; median KPS 70) seen and treated for PCNSL at MSKCC between 1983 and 2003. The median survival was 37 months and median follow up of surviving patients is 35 months. Univariate analysis of potential prognostic factors was performed using the Kaplan Meier product limit method. Significant univariate variables were included in a multivariate analysis using the Cox proportional hazards regression model. Patients were separately analyzed using the IELSG prognostic score. Finally, RPA was employed as an independent method of developing specific prognostic categories. Results: In the univariate analysis, age, hemiparesis, mental status changes, creatinine clearance and KPS were significant predictors of overall survival; in the multivariate model only age and KPS remained as significant predictors. 113 patients had adequate information (all 5 variables) to be analyzed using the IELSG prognostic score; while this correlated significantly with overall survival, the comparison between groups 2 and 3 was not statistically significant (p = 0.10). RPA of all 338 patients identified 3 subgroups: age ≤ 50 (median OS 9.2 y), age > 50 and KPS ≥ 70 (median OS 3.2 y) and age > 50 and KPS < 70 (median OS 1 y) that significantly separated our entire PCNSL population (p < 0.001). Conclusions: The use of RPA allows for easy discrimination of 3 prognostic groups of patients with PCNSL. In contrast to the IELSG score the MSK RPA classification includes information that is readily available on all patients and can be easily incorporated into the analysis or design of clinical research. No significant financial relationships to disclose.


Cancers ◽  
2019 ◽  
Vol 11 (1) ◽  
pp. 57 ◽  
Author(s):  
Ching-Fu Chang ◽  
Pei-Wei Huang ◽  
Jen-Shi Chen ◽  
Yen-Yang Chen ◽  
Chang-Hsien Lu ◽  
...  

Gemcitabine plus S-1 (GS) is commonly used to treat advanced pancreatic cancer (APC) in Asia. Few clinical experiments have demonstrated the clinical efficacy of GS in routine clinical practice. We aimed to identify the prognostic factors and develop a prognostic model for survival prediction in patients with APC, treated with GS. Records of 111 patients with newly diagnosed APC who received first-line palliative GS chemotherapy during 2010–2016 in Taiwan were analyzed retrospectively. Univariate and multivariate analyses were performed for the identification of prognostic factors. A prognostic model using prognosticators from the multivariate analysis was developed for survival prediction. The median overall survival (OS) for the cohort was 9.3 months (95% confidence interval [CI], 8.0–10.6). The prognostic model was constructed based on four independent prognosticators: performance status, tumor stage, pre-treatment albumin level, and neutrophil-to-lymphocyte ratio. Patients were categorized by tertiles into good, intermediate, and poor prognostic groups. The median OS values for each of these groups were 21.1 (95% CI, 8.2–33.9), 9.2 (95% CI, 8.3–10.1), and 5.8 months (95% CI, 4.4–7.1; log-rank p < 0.001), respectively. The bootstrapped corrected C-index of this model was 0.80 (95% CI, 0.71–0.89). The developed model was robust and could accurately predict survival in this population, and can assist clinicians and patients in survival discrimination and the determination of appropriate medical care goals. Additional research is needed to externally validate the model’s performance.


ISRN Oncology ◽  
2014 ◽  
Vol 2014 ◽  
pp. 1-5 ◽  
Author(s):  
Kent Angelo ◽  
Astrid Dalhaug ◽  
Adam Pawinski ◽  
Ellinor Haukland ◽  
Carsten Nieder

Purpose. Validation of a Canadian three-tiered prognostic model (survival prediction score, SPS) in Norwegian cancer patients referred for palliative radiotherapy (PRT), and evaluation of age-dependent performance of the model. Patients and Methods. We analyzed all 579 PRT courses administered at a dedicated PRT facility between 20.06.07 and 31.12.2009. SPS was assigned as originally described, That is, by taking into consideration three variables: primary cancer type, site of metastases, and performance status. Results. Patients with poor prognosis (non-breast cancer, metastases other than bone, and Karnofsky performance status (KPS) ≤ 60) had median survival of 13 weeks. Those with intermediate prognosis (two of these parameters) survived for a median of 29 weeks, and patients with good prognosis for a median of 114 weeks, P<0.001. While this model performed well in patients who were 60 years or older, it was less satisfactory in younger patients (no significant difference between the good and intermediate prognosis groups). Conclusion. SPS should mainly be used to predict survival of elderly cancer patients. However, even in this group accuracy is limited because the good prognosis group contained patients with short survival, while the poor prognosis group contained long-term survivors. Thus, improved models should be developed.


2021 ◽  
Vol 44 (3) ◽  
pp. E32-44
Author(s):  
Jia Shen ◽  
Ming Shu ◽  
Shujie Xie ◽  
Jia Yan ◽  
Kaile Pan ◽  
...  

Purpose: This study aimed to screen hepatitis B virus (HBV)-associated hepatocellular carcinoma (HCC)-related feature ribonucleic acids (RNAs) and to establish a prognostic model. Methods: The transcriptome expression data of HBV-associated HCC were downloaded from The Cancer Genome Atlas (TCGA) database and Gene Expression Omnibus database. Differential RNAs between HBV-associated HCC and normal controls were identified by a meta-analysis of TCGA, GSE55092 and GSE121248. Weighted gene co-expression network analysis was performed to identify key RNAs and modules. A prognostic score model was established using TCGA as a training set by Cox regression analysis and was validated in E-TABM-36 dataset. Additionally, independent prognostic clinical factors were screened, and the function of lncRNAs waspredicted through Gene Set Enrichment Analysis. Results: A total of 710 consistent differential RNAs between HBV-associated HCC and normal controls were obtained, including five lncRNAs and 705 mRNAs. An optimized combination of six differential RNAs (DSCR4, DBH, ECM1, GDAP1, MATR3 and RFC4) was selected and a prognostic score model was constructed. Kaplan-Meier analysis demonstrated that the prognosis of the high-risk and low-risk groups separated by this model was significantly different in the training set and the validation set. Gene Set Enrichment Analysis showed that the co-expression genes of DSCR4 were significantly correlated with neuroactive ligand receptor interactionpathway. Conclusion: A prognostic model based on DSCR4, DBH, ECM1, GDAP1, MATR3 and RFC4 was developed that can accurately predict the prognosis of patients with HBV-associated HCC. These genes, as well as histologic grade, may serve as independent prognostic factors in HBV-associated HCC.


2020 ◽  
Author(s):  
Masashi Sawada ◽  
Akiyoshi Kasuga ◽  
Takafumi Mie ◽  
Takaaki Furukawa ◽  
Takanobu Taniguchi ◽  
...  

Abstract Background There is no established second-line treatment after failure of gemcitabine plus nab-paclitaxel (GnP) therapy for metastatic pancreatic cancer (MPC). This study aimed to evaluate the efficacy and tolerability of the modified FOLFIRINOX (mFFX) as a second-line therapy for MPC and investigate prognostic factors for survival. Methods From 2015–2019, we retrospectively reviewed the medical records of patients receiving mFFX for MPC after failure of GnP therapy. Patients were treated every 2 weeks with mFFX (intravenous oxaliplatin 85 mg/m 2 , intravenous irinotecan 150 mg/m 2 , and continuous infusion of 5-fluorouracil 2,400 mg/m 2 for 46 hours without bolus infusion) until disease progression, patient refusal, or unacceptable toxicity. Results In total, 104 patients received mFFX. The median overall survival (OS) was 7.0 months (95% confidence interval [CI]: 6.2-9.8) and the progression-free survival (PFS) 3.9 months (95% CI 2.8-5.0). The objective response rate was 10.6% and the disease control rate 56.7%. The median relative dose intensities of oxaliplatin, irinotecan, and infusional 5-FU were 80.0% (range 21.5-100%), 77.2% (range 38.1-100%), and 85.9% (range 36.9-100%), respectively. Grade 3-4 toxicities were reported in 57 patients (54.8%), including neutropenia, leukopenia, anemia, febrile neutropenia, and peripheral sensory neuropathy. Glasgow prognostic score and carcinoembryonic antigen level were independently associated with survival. Our prognostic model using these parameters could classify the patients into good (n = 38), intermediate (n = 47), and poor (n = 19) prognostic groups. The median OS and PFS time was 14.7 (95% CI 7.6-16.3) and 7.6 months (95% CI 4.1-10.5) for the good prognostic factors, 6.5 (95% CI 5.5-10.0) and 3.6 months (95% CI 2.7-4.8) for the intermediate prognostic factors and 5.0 (95% CI 2.9-6.6) and 1.7 months (95% CI 0.9-4.3) for the poor prognostic factors, respectively. Conclusions The mFFX showed to be a tolerable second-line treatment for MPC after GnP failure. Our prognostic model might be useful for deciding whether mFFX is indicated in this setting.


2019 ◽  
Author(s):  
Secil Demirkol Canli ◽  
Ege Dedeoglu ◽  
Muhammad Waqas Akbar ◽  
Baris Kucukkaraduman ◽  
Murat Isbilen ◽  
...  

Abstract Pancreatic ductal adenocarcinoma (PDAC) is among the most lethal cancers. Known risk factors for this disease are currently insufficient in predicting mortality. The only FDA approved prognostic biomarker for PDAC patients is CA19-9. This, along with AJCC TNM staging and performance status, are considered important prognostic indicators in clinical practice. In order to better prognosticate patients with PDAC, we identified a novel panel of genes by utilizing publically available microarray and RNAseq data of PDAC tumors from GEO and TCGA. Expression of 20 genes were significantly associated with overall survival in four datasets and event-free survival in TCGA. A score generated based on the expression matrix of these genes could be validated in two independent cohorts. We find that this “Pancreatic cancer prognostic score 20 – PPS20” is dramatically elevated in metastatic tissue compared to primary tumor, and is higher in primary tumors compared to normal pancreatic tissue. Transcriptomic analyses show that tumors with low PPS20 have overall more immune cell infiltration and a higher CD8 T cell/Treg ratio when compared to those with high PPS20. Analyses of proteomic data from TCGA PAAD indicated higher levels of Cyclin B1, RAD51, EGFR and a lower E-cadherin/Fibronectin ratio in tumors with high PPS20. The PPS20 score defines not only prognostic and biological sub-groups but can predict response to targeted therapy options as well. Overall, PPS20 is a stronger and more robust transcriptomic signature when compared to similar, previously published gene lists.


2018 ◽  
Vol 38 (8) ◽  
pp. 1468-1474 ◽  
Author(s):  
Andrea Gmür ◽  
Philippe Kolly ◽  
Marina Knöpfli ◽  
Jean-François Dufour

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