205 research outputs found
Cross-Validation for Nonlinear Mixed Effects Models
Cross-validation is frequently used for model selection in a variety of
applications. However, it is difficult to apply cross-validation to mixed
effects models (including nonlinear mixed effects models or NLME models) due to
the fact that cross-validation requires "out-of-sample" predictions of the
outcome variable, which cannot be easily calculated when random effects are
present. We describe two novel variants of cross-validation that can be applied
to nonlinear mixed effects models. One variant, where out-of-sample predictions
are based on post hoc estimates of the random effects, can be used to select
the overall structural model. Another variant, where cross-validation seeks to
minimize the estimated random effects rather than the estimated residuals, can
be used to select covariates to include in the model. We show that these
methods produce accurate results in a variety of simulated data sets and apply
them to two publicly available population pharmacokinetic data sets.Comment: 38 pages, 15 figures To be published in the Journal of
Pharmacokinetics and Pharmacodynamic
"Pre-conditioning" for feature selection and regression in high-dimensional problems
We consider regression problems where the number of predictors greatly
exceeds the number of observations. We propose a method for variable selection
that first estimates the regression function, yielding a "pre-conditioned"
response variable. The primary method used for this initial regression is
supervised principal components. Then we apply a standard procedure such as
forward stepwise selection or the LASSO to the pre-conditioned response
variable. In a number of simulated and real data examples, this two-step
procedure outperforms forward stepwise selection or the usual LASSO (applied
directly to the raw outcome). We also show that under a certain Gaussian latent
variable model, application of the LASSO to the pre-conditioned response
variable is consistent as the number of predictors and observations increases.
Moreover, when the observational noise is rather large, the suggested procedure
can give a more accurate estimate than LASSO. We illustrate our method on some
real problems, including survival analysis with microarray data
A radiopaque polymer hydrogel used as a fiducial marker in gynecologic-cancer patients receiving brachytherapy
We assessed a novel Food and Drug Administrationāapproved hydrogel, synthesized as absorbable iodinated particles, in gynecologic-cancer patients undergoing computed tomography (CT) or magnetic resonance (MR) based brachytherapy after external beam radiation
Viral MicroRNAs Identified in Human Dental Pulp
MicroRNAs (miRs) are a family of non-coding RNAs that regulate gene expression. They are ubiquitous among multicellular eukaryotes and are also encoded by some viruses. Upon infection, viral miRs (vmiRs) can potentially target gene expression in the host and alter the immune response. While prior studies have reported viral infections in human pulps, the role of vmiRs in pulpal disease is yet to be explored. The purpose of this study was to examine the expression of vmiRs in normal and diseased pulps and to identify potential target genes
Semi-Supervised Methods to Predict Patient Survival from Gene Expression Data
An important goal of DNA microarray research is to develop tools to diagnose cancer more accurately based on the genetic profile of a tumor. There are several existing techniques in the literature for performing this type of diagnosis. Unfortunately, most of these techniques assume that different subtypes of cancer are already known to exist. Their utility is limited when such subtypes have not been previously identified. Although methods for identifying such subtypes exist, these methods do not work well for all datasets. It would be desirable to develop a procedure to find such subtypes that is applicable in a wide variety of circumstances. Even if no information is known about possible subtypes of a certain form of cancer, clinical information about the patients, such as their survival time, is often available. In this study, we develop some procedures that utilize both the gene expression data and the clinical data to identify subtypes of cancer and use this knowledge to diagnose future patients. These procedures were successfully applied to several publicly available datasets. We present diagnostic procedures that accurately predict the survival of future patients based on the gene expression profile and survival times of previous patients. This has the potential to be a powerful tool for diagnosing and treating cancer
An Analysis of Patient Characteristics and Clinical Outcomes in Primary Pulmonary Sarcoma
INTRODUCTION: Literature concerning primary pulmonary sarcomas (PPS) is limited to small case series. This study examines, in a large cohort, the clinical characteristics and therapeutic strategies of PPS and their impact on overall survival (OS). METHODS: This was a retrospective analysis from the Surveillance, Epidemiology, and End Results database (1988-2008). Eligible patients had primary PPS and underwent local therapy. Survival estimates were obtained using the Kaplan-Meier method and the Cox regression model. OS of PPS patients were compared with a cohort of 10,909 patients with extremity soft-tissue sarcomas. RESULTS: The cohort included 365 PPS patients with a median follow-up of 21 months. Fifty-five percent of the patients had large tumors (>5 cm), 76% were high-grade, and 16% had node-positive disease. Seventy-five percent of the cohort underwent surgery alone, 14% underwent surgery and radiation therapy, and 11% underwent radiation therapy alone. Multivariate analysis showed reduced OS for patients with tumors more than 5 cm (hazard ratio [HR] 1.6, 95% confidence interval [CI] 1.25-2.19), high tumor grade (HR 3.1, 95% CI 1.26-3.62), and unresectable disease (HR 2.6, 95% CI 1.76-3.88. The 5-year OS for the cohort of pulmonary sarcomas versus sarcomas of the extremities was 35% versus 71% (p < 0.0001). CONCLUSION: This large study examining PPS patients reveals a high rate of nodal involvement and a markedly worse OS than patients with extremity soft-tissue sarcomas. Thus, given the poor overall prognosis, it is recommended that PPS patients undergo a thorough mediastinal nodal evaluation to rule out locoregional metastasis and proceed with aggressive treatment
Biopsychosocial correlates of persistent postsurgical pain in women with endometriosis
ObjectiveTo examine pain and biopsychosocial correlates over time for women with persistent postsurgical pain after surgery for endometriosis.MethodsCrossĆ¢ sectional study of women who underwent any endometriosis surgery between 2003 and 2006. Following surgery, patients completed validated questionnaires (ShortĆ¢ Form McGill Pain Questionnaire, 12Ć¢ item ShortĆ¢ Form Health Survey, Beck Depression Inventory, Coping Strategies Questionnaire catastrophizing subscale). The primary outcome was pelvic pain intensity, measured by the McGill total pain score. Bivariate comparisons between each potential predictor and pain intensity were performed using the Ć 2 and t tests, 1Ć¢ way analysis of variance, and simple linear regression.ResultsIn total, 79 completed the questionnaires and were included in the present analysis. The McGill affective pain score was negatively correlated with age (ĆĀ²Ć¢ coefficient Ć¢ 0.12, P = 0.002) and positively correlated with catastrophization (ĆĀ²Ć¢ coefficient 0.66, P = 0.01). Women with a history of dyspareunia scored significantly higher on the McGill total pain score (P < 0.001); there was no association between pain intensity and endometriosis severity.ConclusionYounger age and catastrophization are correlated with persistent pain following surgery for endometriosis. The severity of endometriosis does not predict persistent pain. Further evaluation of psychosocial factors may identify patients who are least likely to benefit from surgeries for endometriosisĆ¢ associated pelvic pain.Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/135478/1/ijgo169.pd
Universal properties of correlation transfer in integrate-and-fire neurons
One of the fundamental characteristics of a nonlinear system is how it
transfers correlations in its inputs to correlations in its outputs. This is
particularly important in the nervous system, where correlations between
spiking neurons are prominent. Using linear response and asymptotic methods for
pairs of unconnected integrate-and-fire (IF) neurons receiving white noise
inputs, we show that this correlation transfer depends on the output spike
firing rate in a strong, stereotyped manner, and is, surprisingly, almost
independent of the interspike variance. For cells receiving heterogeneous
inputs, we further show that correlation increases with the geometric mean
spiking rate in the same stereotyped manner, greatly extending the generality
of this relationship. We present an immediate consequence of this relationship
for population coding via tuning curves
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