scholarly journals The Prognostic Ability of Staging System in Men with Penile Cancer: An Analysis of SEER Database

2020 ◽  
Vol 4 (1) ◽  
pp. 68-77
Author(s):  
Aditya Jalan ◽  
Ravi Kanodia ◽  
Sarita Rana Gurung ◽  
Rajeev Kumar Malhotra ◽  
Umesh Nepal ◽  
...  

Background: Penile cancer is now a rare condition. The low incidence of the disease makes a valid estimation of its prognosis difficult. In this study, we made an attempt and propose a nomogram to develop a prognostic rule that could predict the Cancer-Specific Mortality (CSM) free rates in patients with primary penile squalors cell carcinoma of the penis (PPSCC).Methods: This study included 1304 patients diagnosed with PPSCC between the years 2004 & 2011 and treated with penile tumor excision. Subjects were staged as per Surveillance, Epidemiology & End Results stage (SEER), American Joint Committee on Cancer (AJCC), TNM classification and tumor grade (TG). CSM free rates were determined. Univariate and multivariate Cox regression model was used to test the prediction of the CSM free rate. The predictive rule accuracy was created using the receiver operating characteristic curve. Results: The clinico-pathological profile depicts a mean age of 64.66 ± 14.38 yrs. The most common primary site involved was glans penis (n= 483, 37%) and the disease was most commonly diagnosed at AJCC stage I (n= 670, 51.4%) disease. The cumulative 5-year CSM free rates according to Fine & Gray, & Kaplan-Meier methods were 81.8% and 79.8%, respectively. The predictive accuracy as per SEER stage, AJCC stage, TNM stage alone were 68.8%, 70.3%, 72.3%, respectively. When TG was combined, the predictive accuracy increased to 72.8%, 73.1%, and 75.0%, respectively. TNM stage with TG was most accurate in predicting CSM free rate compared to other models. Conclusions: TNM stage with TG and AJCC stage with TG appear to have comparable accuracy to predict the CSM free rate in patients with PPSCC, the TNM stage with TG is the most accurate (75%) method to predict the CSM free rates. The addition of the TG variable improved the accuracy of these prognostic models.

Assessment ◽  
2018 ◽  
Vol 27 (8) ◽  
pp. 1886-1900 ◽  
Author(s):  
Richard B. A. Coupland ◽  
Mark E. Olver

The present study featured an investigation of the predictive properties of risk and change scores of two violence risk assessment and treatment planning tools—the Violence Risk Scale (VRS) and the Historical, Clinical, Risk–20, Version 2 (HCR-20)—in sample of 178 treated adult male violent offenders who attended a high-intensity violence reduction program. The cases were rated on the VRS and HCR-20 using archival information sources and followed up nearly 10 years postrelease. Associations of HCR-20 and VRS risk and change scores with postprogram institutional and community recidivism were examined. VRS and HCR-20 scores converged in conceptually meaningful ways, supporting the construct validity of the tools for violence risk. Receiver operating characteristic curve analyses demonstrated moderate- to high-predictive accuracy of VRS and HCR-20 scores for violent and general community recidivism, but weaker accuracy for postprogram institutional recidivism. Cox regression survival analyses demonstrated that positive pretreatment and posttreatment changes, as assessed via the HCR-20 and VRS, were each significantly associated with reductions in violent and general community recidivism, as well as serious institutional misconducts, after controlling for baseline pretreatment score. Implications for use of the HCR-20 and VRS for dynamic violence risk assessment and management are discussed.


2020 ◽  
Vol 19 ◽  
pp. 153303382095235
Author(s):  
Yaning Zhou ◽  
Yijun Guo ◽  
Qing Cui ◽  
Yun Dong ◽  
Xiaoyue Cai ◽  
...  

Objective: Lung cancer is often associated with hypercoagulability. Thromboelastography provides integrated information on clot formation in whole blood. This study explored the possible relationship between thromboelastography and lung cancer. Methods: Lung cancer was staged according to the Tumor, Node, and Metastasis (TNM) classification system. Thromboelastography parameters in different stages of disease were compared. The value of thromboelastography for stage prediction was determined by area under the receiver operating characteristic curve analysis. Results: A total of 182 patients diagnosed with lung cancer were included. Thromboelastography parameters, including kinetics time, α-angle, and maximum amplitude, differed significantly between patients with metastatic and limited lung cancers ( P < 0.05). Kinetics time was significantly reduced and maximum amplitude was significantly increased in patients with stage I and II compared with stage III and IV tumors ( P < 0.05). TNM stage was significantly negatively correlated with kinetics time ( r = −0.186), and significantly positively correlated with α-angle ( r = 0.151) and maximum amplitude ( r = 0.251) (both P < 0.05). The area under the curve for kinetics time in patients with stage I cancer was 0.637 ( P < 0.05) and that for α-angle in stage ≥ II was 0.623 ( P < 0.05). The areas under the curves for maximum amplitude in stage ≥ III and stage IV cancer were 0.650 and 0.605, respectively (both P < 0.05). Thromboelastography parameters were more closely associated with TNM stage in patients with lung adenocarcinoma than in the whole lung cancer population. Conclusion: This study identified the diagnostic value of thromboelastography parameters for determining tumor stage in patients with lung cancer. Thromboelastography can be used as an independent predictive parameter for lung cancer severity.


2020 ◽  
Vol 2020 ◽  
pp. 1-9
Author(s):  
Rui-zhe Zheng ◽  
Jiang Xie ◽  
Shui-qiang Zhang ◽  
Wen Li ◽  
Bo Dong ◽  
...  

Background and Aims. Cancer-specific survival (CSS) of rectal cancer (RC) is associated with several factors. We aimed to build an efficient competing-risk nomogram based on log odds of positive lymph nodes (LODDS) to predict RC survival. Methods. Medical records of 8754 patients were collected from the Surveillance, Epidemiology, and End Results (SEER) database, of 4895 patients from SEER during 2011–2014 and of 478 patients from an Eastern center as a development cohort, validation cohort, and test cohort, respectively. Univariate and multivariate competing-risk analyses were performed to build competing-risk nomogram for predicting the CSS of RC patients. Prediction efficacy was evaluated and compared with reference to the 8th TNM classification using the factor areas under the receiver operating characteristic curve (AUC) and Brier score. Results. The competing-risk nomogram was based on 6 variables: size, M stage, LODDS, T stage, grade, and age. The competing-risk nomogram showed a higher AUC value in predicting the 5-year death rate due to RC than the 8th TNM stage in the development cohort (0.81 vs. 0.76), validation cohort (0.85 vs. 0.82), and test cohort (0.71 vs. 0.66). The competing-risk nomogram also showed a higher Brier score in predicting the 5-year death rate due to RC than the 8th TNM stage in the development cohort (0.120 vs. 0.127), validation cohort (0.123 vs. 0.128), and test cohort (0.202 vs. 0.226). Conclusion. We developed and validated a competing-risk nomogram for RC death, which could provide the probability of survival averting competing risk to facilitate clinical decision-making.


BMC Cancer ◽  
2021 ◽  
Vol 21 (1) ◽  
Author(s):  
Chunyu Zhang ◽  
Haitao Liu ◽  
Pengfei Xu ◽  
Yinqiu Tan ◽  
Yang Xu ◽  
...  

Abstract Background To accurately predict the prognosis of glioma patients. Methods A total of 541 samples from the TCGA cohort, 181 observations from the CGGA database and 91 samples from our cohort were included in our study. Long non-coding RNAs (LncRNAs) associated with glioma WHO grade were evaluated by weighted gene co-expression network analysis (WGCNA). Five lncRNA features were selected out to construct prognostic signatures based on the Cox regression model. Results By weighted gene co-expression network analysis (WGCNA), 14 lncRNAs related to glioma grade were identified. Using univariate and multivariate Cox analysis, five lncRNAs (CYTOR, MIR155HG, LINC00641, AC120036.4 and PWAR6) were selected to develop the prognostic signature. The Kaplan-Meier curve depicted that the patients in high risk group had poor prognosis in all cohorts. The areas under the receiver operating characteristic curve of the signature in predicting the survival of glioma patients at 1, 3, and 5 years were 0.84, 0.92, 0.90 in the CGGA cohort; 0.8, 0.85 and 0.77 in the TCGA set and 0.72, 0.90 and 0.86 in our own cohort. Multivariate Cox analysis demonstrated that the five-lncRNA signature was an independent prognostic indicator in the three sets (CGGA set: HR = 2.002, p < 0.001; TCGA set: HR = 1.243, p = 0.007; Our cohort: HR = 4.457, p = 0.008, respectively). A nomogram including the lncRNAs signature and clinical covariates was constructed and demonstrated high predictive accuracy in predicting 1-, 3- and 5-year survival probability of glioma patients. Conclusion We established a five-lncRNA signature as a potentially reliable tool for survival prediction of glioma patients.


2021 ◽  
Vol 12 ◽  
Author(s):  
Yajie Qi ◽  
Yingqi Xing ◽  
Lijuan Wang ◽  
Jie Zhang ◽  
Yanting Cao ◽  
...  

Background: We aimed to explore whether transcranial Doppler (TCD) combined with quantitative electroencephalography (QEEG) can improve prognosis evaluation in patients with a large hemispheric infarction (LHI) and to establish an accurate prognosis prediction model.Methods: We prospectively assessed 90-day mortality in patients with LHI. Brain function was monitored using TCD-QEEG at the bedside of the patient.Results: Of the 59 (55.3 ± 10.6 years; 17 men) enrolled patients, 37 (67.3%) patients died within 90 days. The Cox regression analyses revealed that the Glasgow Coma Scale (GCS) score ≤ 8 [hazard ratio (HR), 3.228; 95% CI, 1.335–7.801; p = 0.009], TCD-terminal internal carotid artery as the offending vessel (HR, 3.830; 95% CI, 1.301–11.271; p = 0.015), and QEEG-a (delta + theta)/(alpha + beta) ratio ≥ 3 (HR, 3.647; 95% CI, 1.170–11.373; p = 0.026) independently predicted survival duration. Combining these three factors yielded an area under the receiver operating characteristic curve of 0.905 and had better predictive accuracy than those of individual variables (p &lt; 0.05).Conclusion: TCD and QEEG complement the GCS score to create a reliable multimodal method for monitoring prognosis in patients with LHI.


2020 ◽  
Author(s):  
Lingyu Zhang ◽  
Yu Li ◽  
Weiwei Liu ◽  
Xuchu Wang ◽  
Ying Ping ◽  
...  

Abstract Background: Prostate cancer (PCa) recurrence leads to much higher mortality than those without recurring events. Early and accurate laboratory diagnosis is particularly important for early identification of patients at high risk of recurrence and to benefit from additional systemic intervention. This study aimed to develop efficient and accurate Prostate Cancer diagnostic and prognostic biomarkers for the identification of initial tumor new events. Methods: Gene Expression Omnibus (GEO) datasets and The Cancer Genome Atlas (TCGA) data portal were utilized to obtain differentially expressed genes (DEGs) and clinical trait information in PCa. WGCNA analysis obtained the most relevant clinical traits and genes enriched in several modules. Univariate Cox regression analysis and multivariate Cox proportional hazards (Cox-PH) model was employed to candidate gene signatures related to Disease-Free Interval (DFI). Internal and external cohort was utilized to test and validate the validity, accuracy, and clinical utility of prognostic models.Results: We constructed and optimized a valid and credible model for predicting patient outcomes, based on 5 Gleason score-associated gene signatures (ZNF695, CENPA, TROAP, BIRC5, KIF20A). Furthermore, ROC and Kaplan-Meier analysis revealed higher diagnostic efficiency for PCa and predictive effectiveness in tumor recurrence and metastasis. Calibration curve also revealed high prediction accuracy in internal TCGA cohort and external GEO cohort. The model was prognostically significant in the stratified cohort, including TNM classification and Gleason score, and was deemed to be an independent PCa prognostic factor, and superioring to other clinicopathological characteristics. On the other hand, we also measured the correlation between gene signatures’ expression and inflammation landscape. 5 gene signatures were significantly positively correlated with tumor purity and negatively correlated with the immersion levels of CD8+ T cells. Conclusions: Our study identified and validated 5 gene signatures as biomarkers for prostate cancer diagnosis, providing an assessment of DFI while predicting tumor progression, possibly providing novel theories for the treatment of prostate cancer.


Blood ◽  
2015 ◽  
Vol 126 (23) ◽  
pp. 2921-2921
Author(s):  
Elisavet Chatzilari ◽  
Panagiotis Baliakas ◽  
Aliki Xochelli ◽  
Anastasios Maronidis ◽  
Anna Vardi ◽  
...  

Abstract The remarkable clinical heterogeneity of CLL has prompted several initiatives towards the development of prognostic models aiming to stratify patients into subgroups with distinct outcome. However, despite progress, the resultant prognostic models, mostly based on Cox regression analysis, have not been adopted in everyday clinical practice, mainly due to failure to provide sufficiently accurate predictions on a per patient basis. Here, we approached the issue of prognostication amongst Binet stage A CLL cases following a novel approach, in particular using Adaboost, an ensemble learning algorithm based on decision trees. Adaboost jointly considers all available parameters providing a specific prediction for each patient, unlike Cox regression models which are based on identifying parameters with independent prognostic significance. In addition, Adaboost models are completely automated with minimal time for training and prediction generation. This is in contrast to Cox models which are manually trained and require significantly more time for prediction generation. Both Cox regression and Adaboost models were evaluated regarding their predictive accuracy i.e. the number of patients successfully assigned to their true risk group divided by the total number of patients. For the development of the prognostic models, 5-fold cross-validation was used. The patients were equally subdivided into 5 subgroups. Each time, 4 out of the 5 subgroups were used to train the Cox regression and the Adaboost models while the 5th was kept as the validation cohort, where the models were applied to. The study cohort included 789 Binet A CLL patients with available data regarding gender, age, immunogenetic profile, CD38 expression, Döhner model cytogenetic aberrations and treatment status with a median follow up of 8.5 years (range 0-40.5 years, at least 5 years for untreated cases). Patients were subdivided in 3 groups: (i) high risk (HR): time-to-first-treatment (TTFT) <2 years, n=215 (27%); (ii) intermediate risk (IR): TTFT≥2 years and <5 years, n=151 (20%); and, (iii) low risk (LR): no need for treatment within 5 years from diagnosis, n=422 (53%). Applying Adaboost, the HR, IR and LR groups included 326 (41.5%), 0 (0%) and 463 (58.5%) cases, respectively. On multivariate analysis, unmutated IGHV genes U-CLL, subset #2 assignement and CD38 expression emerged as independently predictive of shorter TTFT; in contrast, adverse prognosis cytogenetic aberrations i.e. del(17p) and del(11q) did not retain significance (p=0.06 and 0.052, respectively), likely due to their strong association with U-CLL. Applying Cox regression models based on the significant independent parameters, patients were classified as follows: (i) HR: unmutated IGHV genes (U-CLL) and/or assignment to stereotyped subset #2 (n=357, 45%); (ii) IR: mutated IGHV genes (M-CLL) and high CD38 expression (CD38+) (n=41, 5%); and, (iii) LR: M-CLL and low CD38 expression (CD38-) (n=397, 50%). Prediction accuracies were 58.2% and 61.1% for the Cox regression and the Adaboost model, respectively (McNemar's test: p<0.0025). Both models often failed to identify patients belonging to the IR group. Further, we gave the same clinico-biological parameters used for the development of the prognostic models to 7 trained hematologists and asked them to assign each patient included in the study to one of the 3 risk groups. Among the trained hematologists, responses varied within the range of 51.2-58.4%, leading to an average prediction accuracy of 54.6%: particularly challenging was the discrimination between the HR vs the IR group. In conclusion, Adaboost outperforms to a small, yet statistically significant, degree the predictive accuracy of both Cox regression and expert judgment, suggesting its potential for clinical testing. However, the predictive accuracy rates of both the Adaboost and Cox regression approach are still unsatisfactory, highlighting that further development is required in order to provide robust personalized predictive modeling, while also suggesting that statistical significance does not automatically translate into clinical utility. This indicates the need for incorporating disease- and host-related parameters not yet evaluated for their prognostic/predictive value in CLL in order to refine risk stratification, thus meaningfully empowering physicians in clinical decision-making. Disclosures Niemann: Janssen: Consultancy; Roche: Consultancy; Gilead: Consultancy; Novartis: Other: Travel grant. Ghia:Janssen Pharmaceuticals: Research Funding.


2021 ◽  
Author(s):  
Jonathan K. L. Mak ◽  
Maria Eriksdotter ◽  
Martin Annetorp ◽  
Ralf Kuja-Halkola ◽  
Laura Kananen ◽  
...  

ABSTRACTBackgroundThe Clinical Frailty Scale (CFS) is a strong predictor for worse outcomes in geriatric COVID-19 patients, but it is less clear whether an electronic frailty index (eFI) constructed from routinely collected electronic health records (EHRs) provides similar predictive value. This study aimed to investigate the predictive ability of an eFI in comparison to other frailty and comorbidity measures, using mortality, readmission, and the length of stay as outcomes in geriatric COVID-19 patients.MethodsWe conducted a retrospective cohort study using EHRs from nine geriatric clinics in Stockholm, Sweden, comprising 3,405 COVID-19 patients (mean age 81.9 years) between 1/3/2020 and 31/10/2021. Frailty was assessed using a 48-item eFI developed for Swedish geriatric patients, the CFS, and Hospital Frailty Risk Score (HFRS). Comorbidity was measured using the Charlson Comorbidity Index (CCI). We analyzed in-hospital mortality and 30-day readmission using logistic regression and area under receiver operating characteristic curve (AUC). 30-day and 6-month mortality were modelled by Cox regression, and the length of stay by linear regression.ResultsControlling for age and sex, a 10% increase in the eFI was associated with higher risks of in-hospital mortality (odds ratio [OR]=2.84; 95% confidence interval=2.31-3.51), 30-day mortality (hazard ratio [HR]=2.30; 1.99-2.65), 6-month mortality (HR=2.33; 2.07-2.62), 30-day readmission (OR=1.34; 1.06-1.68), and longer length of stay (β=2.28; 1.90-2.66).The CFS, HFRS and CCI similarly predicted these outcomes, but the eFI had the best predictive accuracy for in-hospital mortality (AUC=0.775).ConclusionsAn eFI based on routinely collected EHRs can be applied in identifying high-risk geriatric COVID-19 patients.


2021 ◽  
Author(s):  
Jonathan K. L. Mak ◽  
Sara Hagg ◽  
Maria Eriksdotter ◽  
Martin Annetorp ◽  
Ralf Kuja-Halkola ◽  
...  

Background: Frailty assessment in the Swedish health system relies on the Clinical Frailty Scale (CFS), but it requires training, in-person evaluation, and is often missing in medical records. We aimed to develop an electronic frailty index (eFI) from routinely collected electronic health records (EHRs) and assess its predictive ability for adverse outcomes in geriatric patients. Methods: EHRs were extracted for 18,225 geriatric patients with unplanned admissions between 1/3/2020 and 17/6/2021 from nine geriatric clinics in Stockholm, Sweden. A 48-item eFI was constructed using diagnostic codes, functioning and other health indicators, and laboratory data. The CFS, Hospital Frailty Risk Score, and Charlson Comorbidity Index were used for comparative assessment of the eFI. We modelled in-hospital mortality and 30-day readmission using logistic regression; 30-day and 6-month mortality using Cox regression; and length of stay using linear regression. Results: 13,188 patients were included in analyses (mean age 83.1 years). A 10% increment in the eFI was associated with higher risks of in-hospital (odds ratio: 5.34; 95% confidence interval: 4.20-6.82), 30-day (hazard ratio [HR]: 3.28; 2.91-3.69), and 6-month mortality (HR: 2.70; 2.52-2.90) adjusted for age and sex. Of the frailty and comorbidity measures, the eFI had the best predictive accuracy for in-hospital mortality, yielding an area under receiver operating characteristic curve of 0.813. Higher eFI also predicted a longer length of stay, but had a rather poor discrimination for 30-day readmission. Conclusions: An EHR-based eFI has good predictive accuracy for adverse outcomes, suggesting that it can be used in risk stratification in geriatric patients.


2013 ◽  
Vol 2013 ◽  
pp. 1-10 ◽  
Author(s):  
Herng-Chia Chiu ◽  
Te-Wei Ho ◽  
King-Teh Lee ◽  
Hong-Yaw Chen ◽  
Wen-Hsien Ho

The aim of this present study is firstly to compare significant predictors of mortality for hepatocellular carcinoma (HCC) patients undergoing resection between artificial neural network (ANN) and logistic regression (LR) models and secondly to evaluate the predictive accuracy of ANN and LR in different survival year estimation models. We constructed a prognostic model for 434 patients with 21 potential input variables by Cox regression model. Model performance was measured by numbers of significant predictors and predictive accuracy. The results indicated that ANN had double to triple numbers of significant predictors at 1-, 3-, and 5-year survival models as compared with LR models. Scores of accuracy, sensitivity, specificity, and area under the receiver operating characteristic curve (AUROC) of 1-, 3-, and 5-year survival estimation models using ANN were superior to those of LR in all the training sets and most of the validation sets. The study demonstrated that ANN not only had a great number of predictors of mortality variables but also provided accurate prediction, as compared with conventional methods. It is suggested that physicians consider using data mining methods as supplemental tools for clinical decision-making and prognostic evaluation.


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