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1.
J Health Commun ; : 1-10, 2023 Oct 24.
Artículo en Inglés | MEDLINE | ID: mdl-37874308

RESUMEN

Health literacy has been identified as an influential factor affecting the HIV care continuum and HIV epidemic, but recent systematic reviews found mixed relationships between health literacy and HIV medication adherence. This may be partially due to discrepancies between health literacy conceptualizations, health literacy measures, and the lifeworld, day-to-day challenges that persons with HIV (PWH) face as they seek and receive care. To address these challenges, a new health literacy tool, Communicating Care Needs Tool for HIV (CCNT-HIV), was developed. With survey responses from 118 PWH, the current study compares CCNT-HIV with the Brief Health Literacy Screening Tool (BRIEF) and the All Aspects of Health Literacy Scale (AAHLS) by conducting a principal component analysis. Six principal components were identified for CCNT-HIV; one principal component was identified for BRIEF; and three principal components were identified for AAHLS. With a correlation analysis, relevance among principal components across the three tools validated CCNT-HIV. This study extended the scope of health literacy measures by emphasizing the relational, multi-variable, collaborative impacts stakeholders make on patients' health management. Practical implications for how health literacy tools, like the CCNT-HIV, can be used to directly benefit patients and their health management are also discussed.

2.
BMC Bioinformatics ; 17(Suppl 13): 381, 2016 Oct 06.
Artículo en Inglés | MEDLINE | ID: mdl-27766939

RESUMEN

BACKGROUND: It has been a challenging task to build a genome-wide phylogenetic tree for a large group of species containing a large number of genes with long nucleotides sequences. The most popular method, called feature frequency profile (FFP-k), finds the frequency distribution for all words of certain length k over the whole genome sequence using (overlapping) windows of the same length. For a satisfactory result, the recommended word length (k) ranges from 6 to 15 and it may not be a multiple of 3 (codon length). The total number of possible words needed for FFP-k can range from 46=4096 to 415. RESULTS: We propose a simple improvement over the popular FFP method using only a typical word length of 3. A new method, called Trinucleotide Usage Profile (TUP), is proposed based only on the (relative) frequency distribution using non-overlapping windows of length 3. The total number of possible words needed for TUP is 43=64, which is much less than the total count for the recommended optimal "resolution" for FFP. To build a phylogenetic tree, we propose first representing each of the species by a TUP vector and then using an appropriate distance measure between pairs of the TUP vectors for the tree construction. In particular, we propose summarizing a DNA sequence by a matrix of three rows corresponding to three reading frames, recording the frequency distribution of the non-overlapping words of length 3 in each of the reading frame. We also provide a numerical measure for comparing trees constructed with various methods. CONCLUSIONS: Compared to the FFP method, our empirical study showed that the proposed TUP method is more capable of building phylogenetic trees with a stronger biological support. We further provide some justifications on this from the information theory viewpoint. Unlike the FFP method, the TUP method takes the advantage that the starting of the first reading frame is (usually) known. Without this information, the FFP method could only rely on the frequency distribution of overlapping words, which is the average (or mixture) of the frequency distributions of three possible reading frames. Consequently, we show (from the entropy viewpoint) that the FFP procedure could dilute important gene information and therefore provides less accurate classification.


Asunto(s)
Algoritmos , Biología Computacional/métodos , Filogenia , Sistemas de Lectura , Bacterias/genética , Codón
3.
Artículo en Inglés | MEDLINE | ID: mdl-28894735

RESUMEN

In this study, we developed and evaluated a novel text-mining approach, using non-negative tensor factorization (NTF), to simultaneously extract and functionally annotate transcriptional modules consisting of sets of genes, transcription factors (TFs), and terms from MEDLINE abstracts. A sparse 3-mode term × gene × TF tensor was constructed that contained weighted frequencies of 106,895 terms in 26,781 abstracts shared among 7,695 genes and 994 TFs. The tensor was decomposed into sub-tensors using non-negative tensor factorization (NTF) across 16 different approximation ranks. Dominant entries of each of 2,861 sub-tensors were extracted to form term-gene-TF annotated transcriptional modules (ATMs). More than 94% of the ATMs were found to be enriched in at least one KEGG pathway or GO category, suggesting that the ATMs are functionally relevant. One advantage of this method is that it can discover potentially new gene-TF associations from the literature. Using a set of microarray and ChIP-Seq datasets as gold standard, we show that the precision of our method for predicting gene-TF associations is significantly higher than chance. In addition, we demonstrate that the terms in each ATM can be used to suggest new GO classifications to genes and TFs. Taken together, our results indicate that NTF is useful for simultaneous extraction and functional annotation of transcriptional regulatory networks from unstructured text, as well as for literature based discovery. A web tool called Transcriptional Regulatory Modules Extracted from Literature (TREMEL), available at http://binf1.memphis.edu/tremel, was built to enable browsing and searching of ATMs.

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