Publications by authors named "Kyle Singleton"

Intratumoral heterogeneity poses a significant challenge to the diagnosis and treatment of recurrent glioblastoma. This study addresses the need for non-invasive approaches to map heterogeneous landscape of histopathological alterations throughout the entire lesion for each patient. We developed BioNet, a biologically-informed neural network, to predict regional distributions of two primary tissue-specific gene modules: proliferating tumor (Pro) and reactive/inflammatory cells (Inf).

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  • Glioblastoma (GBM) is a highly aggressive cancer characterized by genetic variability within tumors, making it difficult to treat effectively; this study aimed to develop a non-invasive MRI-based machine learning model to analyze this genetic heterogeneity.
  • The research introduced a Weakly Supervised Ordinal Support Vector Machine (WSO-SVM) model, trained on data from 74 patients, to predict alterations in key GBM genes using MRI images, achieving higher accuracy than existing algorithms.
  • Results showed the WSO-SVM model to be effective, with accuracies of 80% for the EGFR gene and comparable results for others; the analysis also highlighted different contributions of MRI images, providing valuable insights into tumor genetics for better treatment planning
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Brain cancers pose a novel set of difficulties due to the limited accessibility of human brain tumor tissue. For this reason, clinical decision-making relies heavily on MR imaging interpretation, yet the mapping between MRI features and underlying biology remains ambiguous. Standard (clinical) tissue sampling fails to capture the full heterogeneity of the disease.

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Sampling restrictions have hindered the comprehensive study of invasive non-enhancing (NE) high-grade glioma (HGG) cell populations driving tumor progression. Here, we present an integrated multi-omic analysis of spatially matched molecular and multi-parametric magnetic resonance imaging (MRI) profiling across 313 multi-regional tumor biopsies, including 111 from the NE, across 68 HGG patients. Whole exome and RNA sequencing uncover unique genomic alterations to unresectable invasive NE tumor, including subclonal events, which inform genomic models predictive of geographic evolution.

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  • Glioblastoma treatment currently uses a generic approach, leading to many failed clinical trials due to the tumor's vast diversity among patients.
  • An image-based modeling technique was applied to predict T-cell levels from MRI scans of patients in a dendritic cell vaccine trial, focusing on different tumor regions over time.
  • The study identified previously unrecognized patients who responded positively to the vaccine, suggesting that machine learning can improve clinical trial assessments and move towards personalized treatment strategies.
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Identification of key phenotypic regions such as necrosis, contrast enhancement, and edema on magnetic resonance imaging (MRI) is important for understanding disease evolution and treatment response in patients with glioma. Manual delineation is time intensive and not feasible for a clinical workflow. Automating phenotypic region segmentation overcomes many issues with manual segmentation, however, current glioma segmentation datasets focus on pre-treatment, diagnostic scans, where treatment effects and surgical cavities are not present.

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Automatic brain tumor segmentation is particularly challenging on magnetic resonance imaging (MRI) with marked pathologies, such as brain tumors, which usually cause large displacement, abnormal appearance, and deformation of brain tissue. Despite an abundance of previous literature on learning-based methodologies for MRI segmentation, few works have focused on tackling MRI skull stripping of brain tumor patient data. This gap in literature can be associated with the lack of publicly available data (due to concerns about patient identification) and the labor-intensive nature of generating ground truth labels for model training.

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  • Radiogenomics combines machine learning with clinical imaging to link tumor characteristics with genetic information, though previous studies don’t address the uncertainty in model predictions.
  • A new radiogenomics ML model was created using Gaussian Processes, analyzing data from 95 biopsies and MRIs of 25 patients with Glioblastoma, targeting EGFR amplification.
  • The model demonstrated higher prediction accuracy with low uncertainty (83%) compared to higher uncertainty predictions (48%), and achieved 78% accuracy in a separate validation set, showcasing its potential to improve personalized treatment strategies.
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  • * A database of 741 MRI exams from 729 unique patients was compiled, where 641 exams were used for training the DL system, and 100 were set aside for testing through a blinded assessment platform.
  • * Neuroradiologists rated the mean scores of DL segmentations higher than those from technicians (7.31 vs 6.97), and the DL method demonstrated a strong overlap in segmentations with a Dice coefficient of 0.87, indicating its potential to outperform human segmentations.
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Background: Accurate assessments of patient response to therapy are a critical component of personalized medicine. In glioblastoma (GBM), the most aggressive form of brain cancer, tumor growth dynamics are heterogenous across patients, complicating assessment of treatment response. This study aimed to analyze days gained (DG), a burgeoning model-based dynamic metric, for response assessment in patients with recurrent GBM who received bevacizumab-based therapies.

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Background: Temozolomide (TMZ) has been the standard-of-care chemotherapy for glioblastoma (GBM) patients for more than a decade. Despite this long time in use, significant questions remain regarding how best to optimize TMZ therapy for individual patients. Understanding the relationship between TMZ response and factors such as number of adjuvant TMZ cycles, patient age, patient sex, and image-based tumor features, might help predict which GBM patients would benefit most from TMZ, particularly for those whose tumors lack O6-methylguanine-DNA methyltransferase (MGMT) promoter methylation.

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The explosion of medical imaging data along with the advent of big data analytics has launched an exciting era for clinical research. One factor affecting the ability to aggregate large medical image collections for research is the lack of infrastructure for automated data annotation. Among all imaging modalities, annotation of magnetic resonance (MR) images is particularly challenging due to the non-standard labeling of MR image types.

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Glioblastoma (GBM) is a heterogeneous and lethal brain cancer. These tumors are followed using magnetic resonance imaging (MRI), which is unable to precisely identify tumor cell invasion, impairing effective surgery and radiation planning. We present a novel hybrid model, based on multiparametric intensities, which combines machine learning (ML) with a mechanistic model of tumor growth to provide spatially resolved tumor cell density predictions.

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Sex differences in the incidence and outcome of human disease are broadly recognized but, in most cases, not sufficiently understood to enable sex-specific approaches to treatment. Glioblastoma (GBM), the most common malignant brain tumor, provides a case in point. Despite well-established differences in incidence and emerging indications of differences in outcome, there are few insights that distinguish male and female GBM at the molecular level or allow specific targeting of these biological differences.

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  • The QUIT intervention effectively reduced risky drug use among Latino patients in a primary care setting, demonstrating its applicability outside of the original study locations.
  • Participants in the intervention group received brief clinician advice, a supportive video, educational materials, and follow-up coaching, leading to a significant reduction in high-scoring drug use days.
  • Results indicated a 40% reduction in drug use among intervention patients, with them also showing a lower likelihood of testing positive for drug use compared to the control group.
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  • The study aimed to evaluate the effectiveness of a brief, multi-component intervention delivered in primary care settings to reduce risky psychoactive drug use among patients identified through screening.
  • The research involved a randomized controlled trial with 334 adult patients in Los Angeles, where intervention participants received brief advice and follow-up coaching, while control patients received standard care.
  • Findings indicated the intervention group reported significantly fewer days of highest substance use compared to the control group, suggesting that the primary care-based intervention could effectively help reduce risky drug use without increasing use of other substances.
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Despite the growing ubiquity of data in the medical domain, it remains difficult to apply results from experimental and observational studies to additional populations suffering from the same disease. Many methods are employed for testing internal validity; yet limited effort is made in testing generalizability, or external validity. The development of disease models often suffers from this lack of validity testing and trained models frequently have worse performance on different populations, rendering them ineffective.

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The growing amount of electronic data collected from patient care and clinical trials is motivating the creation of national repositories where multiple institutions share data about their patient cohorts. Such efforts aim to provide sufficient sample sizes for data mining and predictive modeling, ultimately improving treatment recommendations and patient outcome prediction. While these repositories offer the potential to improve our understanding of a disease, potential issues need to be addressed to ensure that multi-site data and resultant predictive models are useful to non-contributing institutions.

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The accurate and expeditious collection of survey data by coordinators in the field is critical in the support of research studies. Early methods that used paper documentation have slowly evolved into electronic capture systems. Indeed, tools such as REDCap and others illustrate this transition.

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