| Literature DB >> 32787822 |
Atanu Bhattacharjee1,2, Gajendra K Vishwakarma3, Souvik Banerjee4, Sharvari Shukla5.
Abstract
BACKGROUND: As the whole world is experiencing the cascading effect of a new pandemic, almost every aspect of modern life has been disrupted. Because of health emergencies during this period, widespread fear has resulted in compromised patient safety, especially for patients with cancer. It is very challenging to treat such cancer patients because of the complexity of providing care and treatment, along with COVID-19. Hence, an effective treatment comparison strategy is needed. We need to have a handy tool to understand cancer progression in this unprecedented scenario. Linking different events of cancer progression is the need of the hour. It is a huge challenge for the development of new methodology.Entities:
Keywords: Accelerated failure time; Auto-regression; Bayesian; COVID-19; Proportional Hazard model
Mesh:
Year: 2020 PMID: 32787822 PMCID: PMC7422665 DOI: 10.1186/s12874-020-01090-z
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Posterior Estimate generated through different models through Cox PH model
| Bayesian Estimate | MLE | |||||
|---|---|---|---|---|---|---|
| Response | Parameter | Posterior Mean (SD) | 95% HPD | DIC | PD | |
| LRC | Arm | −0.31 (0.14) | (−0.61, − 0.03) | 2187.7 | 0.99 | − 0.31 (− 0.60, − 0.02) |
| Age | −0.20 (0.17) | (− 0.53, 0.13) | ||||
| Gender | 0.41 (0.23) | (−0.06, 0.86) | ||||
| PFS | Arm | −0.31 (0.13) | (−0.58, − 0.05) | 2614.46 | 0.99 | − 0.31 (− 0.57, − 0.04) |
| Age | −0.38 (0.15) | (− 0.64, − 0.09) | ||||
| Gender | 0.49 (0.22) | (0.05, 0.91) | ||||
| OS | Arm | −0.16 (0.13) | (−0.42, 0.08) | 2610.64 | 0.99 | −0.16 (− 0.42, 0.08) |
| Age | −0.38 (0.15) | (− 0.68, − 0.09) | ||||
| Gender | 0.28 (0.20) | (−0.13, 0.66) | ||||
Fig. 1Loco-regional relapse progression
Fig. 2Progression-Free Survival
Fig. 3The plot of Arm effect difference from AFT model and auto-regression model
Posterior Estimates generated for different gap times through AFT model
| Response | Parameter | Posterior Mean (SD) | 95% HPD |
|---|---|---|---|
| PFS | Intercept Arm | 5.32 (0.109) 0.10 (0.15) 2.46 (0.41) | (5.10, 5.53) (−.18, 0.40) (1.71, 3.34) |
| OS | Intercept Arm | 4.66 (0.121) 0.14 (0.17) 0.83 (0.09) | (4.42, 4.89) (−0.19, 0.47) (0.65, 1.03) |