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3.
Nature ; 621(7979): 558-567, 2023 Sep.
Article in English | MEDLINE | ID: mdl-37704720

ABSTRACT

Sustainable Development Goal 2.2-to end malnutrition by 2030-includes the elimination of child wasting, defined as a weight-for-length z-score that is more than two standard deviations below the median of the World Health Organization standards for child growth1. Prevailing methods to measure wasting rely on cross-sectional surveys that cannot measure onset, recovery and persistence-key features that inform preventive interventions and estimates of disease burden. Here we analyse 21 longitudinal cohorts and show that wasting is a highly dynamic process of onset and recovery, with incidence peaking between birth and 3 months. Many more children experience an episode of wasting at some point during their first 24 months than prevalent cases at a single point in time suggest. For example, at the age of 24 months, 5.6% of children were wasted, but by the same age (24 months), 29.2% of children had experienced at least one wasting episode and 10.0% had experienced two or more episodes. Children who were wasted before the age of 6 months had a faster recovery and shorter episodes than did children who were wasted at older ages; however, early wasting increased the risk of later growth faltering, including concurrent wasting and stunting (low length-for-age z-score), and thus increased the risk of mortality. In diverse populations with high seasonal rainfall, the population average weight-for-length z-score varied substantially (more than 0.5 z in some cohorts), with the lowest mean z-scores occurring during the rainiest months; this indicates that seasonally targeted interventions could be considered. Our results show the importance of establishing interventions to prevent wasting from birth to the age of 6 months, probably through improved maternal nutrition, to complement current programmes that focus on children aged 6-59 months.


Subject(s)
Cachexia , Developing Countries , Growth Disorders , Malnutrition , Child, Preschool , Humans , Infant , Infant, Newborn , Cachexia/epidemiology , Cachexia/mortality , Cachexia/prevention & control , Cross-Sectional Studies , Growth Disorders/epidemiology , Growth Disorders/mortality , Growth Disorders/prevention & control , Incidence , Longitudinal Studies , Malnutrition/epidemiology , Malnutrition/mortality , Malnutrition/prevention & control , Rain , Seasons
4.
Nature ; 621(7979): 550-557, 2023 Sep.
Article in English | MEDLINE | ID: mdl-37704719

ABSTRACT

Globally, 149 million children under 5 years of age are estimated to be stunted (length more than 2 standard deviations below international growth standards)1,2. Stunting, a form of linear growth faltering, increases the risk of illness, impaired cognitive development and mortality. Global stunting estimates rely on cross-sectional surveys, which cannot provide direct information about the timing of onset or persistence of growth faltering-a key consideration for defining critical windows to deliver preventive interventions. Here we completed a pooled analysis of longitudinal studies in low- and middle-income countries (n = 32 cohorts, 52,640 children, ages 0-24 months), allowing us to identify the typical age of onset of linear growth faltering and to investigate recurrent faltering in early life. The highest incidence of stunting onset occurred from birth to the age of 3 months, with substantially higher stunting at birth in South Asia. From 0 to 15 months, stunting reversal was rare; children who reversed their stunting status frequently relapsed, and relapse rates were substantially higher among children born stunted. Early onset and low reversal rates suggest that improving children's linear growth will require life course interventions for women of childbearing age and a greater emphasis on interventions for children under 6 months of age.


Subject(s)
Developing Countries , Growth Disorders , Adult , Child, Preschool , Female , Humans , Infant , Infant, Newborn , Asia, Southern/epidemiology , Cognition , Cross-Sectional Studies , Developing Countries/statistics & numerical data , Developmental Disabilities/epidemiology , Developmental Disabilities/mortality , Developmental Disabilities/prevention & control , Growth Disorders/epidemiology , Growth Disorders/mortality , Growth Disorders/prevention & control , Longitudinal Studies , Mothers
5.
Nature ; 621(7979): 568-576, 2023 Sep.
Article in English | MEDLINE | ID: mdl-37704722

ABSTRACT

Growth faltering in children (low length for age or low weight for length) during the first 1,000 days of life (from conception to 2 years of age) influences short-term and long-term health and survival1,2. Interventions such as nutritional supplementation during pregnancy and the postnatal period could help prevent growth faltering, but programmatic action has been insufficient to eliminate the high burden of stunting and wasting in low- and middle-income countries. Identification of age windows and population subgroups on which to focus will benefit future preventive efforts. Here we use a population intervention effects analysis of 33 longitudinal cohorts (83,671 children, 662,763 measurements) and 30 separate exposures to show that improving maternal anthropometry and child condition at birth accounted for population increases in length-for-age z-scores of up to 0.40 and weight-for-length z-scores of up to 0.15 by 24 months of age. Boys had consistently higher risk of all forms of growth faltering than girls. Early postnatal growth faltering predisposed children to subsequent and persistent growth faltering. Children with multiple growth deficits exhibited higher mortality rates from birth to 2 years of age than children without growth deficits (hazard ratios 1.9 to 8.7). The importance of prenatal causes and severe consequences for children who experienced early growth faltering support a focus on pre-conception and pregnancy as a key opportunity for new preventive interventions.


Subject(s)
Cachexia , Developing Countries , Growth Disorders , Child, Preschool , Female , Humans , Infant , Infant, Newborn , Male , Pregnancy , Cachexia/economics , Cachexia/epidemiology , Cachexia/etiology , Cachexia/prevention & control , Cohort Studies , Developing Countries/economics , Developing Countries/statistics & numerical data , Dietary Supplements , Growth Disorders/epidemiology , Growth Disorders/prevention & control , Longitudinal Studies , Mothers , Sex Factors , Malnutrition/economics , Malnutrition/epidemiology , Malnutrition/etiology , Malnutrition/prevention & control , Anthropometry
6.
Stat Med ; 38(19): 3555-3570, 2019 08 30.
Article in English | MEDLINE | ID: mdl-30094965

ABSTRACT

The Bill and Melinda Gates Foundation's Healthy Birth, Growth and Development knowledge integration project aims to improve the overall health and well-being of children across the world. The project aims to integrate information from multiple child growth studies to allow health professionals and policy makers to make informed decisions about interventions in lower and middle income countries. To achieve this goal, we must first understand the conditions that impact on the growth and development of children, and this requires sensible models for characterising different growth patterns. The contribution of this paper is to provide a quantitative comparison of the predictive abilities of various statistical growth modelling techniques based on a novel leave-one-out validation approach. The majority of existing studies have used raw growth data for modelling, but we show that fitting models to standardised data provide more accurate estimation and prediction. Our work is illustrated with an example from a study into child development in a middle income country in South America.


Subject(s)
Body Height/physiology , Body Weight/physiology , Child Development/physiology , Models, Statistical , Child , Child, Preschool , Female , Growth Charts , Humans , Longitudinal Studies , Male , Reproducibility of Results
7.
A A Pract ; 11(1): 11-13, 2018 Jul 01.
Article in English | MEDLINE | ID: mdl-29634555

ABSTRACT

Patients who present with a subarachnoid hemorrhage may have more than 1 intracranial aneurysm at risk, which may not be appreciated until a subsequent aneurysmal bleeding event occurs. We describe a patient who underwent successful aneurysmal clipping, but later presented urgently with large-volume epistaxis 48 hours after the procedure. After successful intubation of the patient, subsequent angiographic imaging determined that the massive intranasal/oral hemorrhage was due to bleeding through the former operative site, from rupture of a previously unrecognized aneurysm. This series of events demonstrates the importance of selecting the most at-risk aneurysm for surgical intervention.


Subject(s)
Aneurysm, Ruptured/surgery , Epistaxis/etiology , Subarachnoid Hemorrhage/complications , Cerebral Angiography , Diagnosis, Differential , Humans , Intracranial Aneurysm/complications , Intracranial Aneurysm/surgery , Subarachnoid Hemorrhage/surgery , Tomography, X-Ray Computed
8.
Clin Microbiol Rev ; 27(4): 949-79, 2014 Oct.
Article in English | MEDLINE | ID: mdl-25278579

ABSTRACT

In global health, critical challenges have arisen from infectious diseases, including the emergence and reemergence of old and new infectious diseases. Emergence and reemergence are accelerated by rapid human development, including numerous changes in demographics, populations, and the environment. This has also led to zoonoses in the changing human-animal ecosystem, which are impacted by a growing globalized society where pathogens do not recognize geopolitical borders. Within this context, neglected tropical infectious diseases have historically lacked adequate attention in international public health efforts, leading to insufficient prevention and treatment options. This subset of 17 infectious tropical diseases disproportionately impacts the world's poorest, represents a significant and underappreciated global disease burden, and is a major barrier to development efforts to alleviate poverty and improve human health. Neglected tropical diseases that are also categorized as emerging or reemerging infectious diseases are an even more serious threat and have not been adequately examined or discussed in terms of their unique risk characteristics. This review sets out to identify emerging and reemerging neglected tropical diseases and explore the policy and innovation environment that could hamper or enable control efforts. Through this examination, we hope to raise awareness and guide potential approaches to addressing this global health concern.


Subject(s)
Communicable Diseases, Emerging/epidemiology , Neglected Diseases/epidemiology , Animals , Communicable Disease Control/economics , Communicable Disease Control/legislation & jurisprudence , Environment , Global Health , Health Policy , Humans , Risk Factors , Tropical Medicine , Zoonoses/epidemiology
9.
Protein Sci ; 23(6): 747-59, 2014 Jun.
Article in English | MEDLINE | ID: mdl-24639379

ABSTRACT

Integrative structural biology attempts to model the structures of protein complexes that are challenging or intractable by classical structural methods (due to size, dynamics, or heterogeneity) by combining computational structural modeling with data from experimental methods. One such experimental method is chemical crosslinking mass spectrometry (XL-MS), in which protein complexes are crosslinked and characterized using liquid chromatography-mass spectrometry to pinpoint specific amino acid residues in close structural proximity. The commonly used lysine-reactive N-hydroxysuccinimide ester reagents disuccinimidylsuberate (DSS) and bis(sulfosuccinimidyl)suberate (BS(3) ) have a linker arm that is 11.4 Å long when fully extended, allowing Cα (alpha carbon of protein backbone) atoms of crosslinked lysine residues to be up to ∼24 Å apart. However, XL-MS studies on proteins of known structure frequently report crosslinks that exceed this distance. Typically, a tolerance of ∼3 Å is added to the theoretical maximum to account for this observation, with limited justification for the chosen value. We used the Dynameomics database, a repository of high-quality molecular dynamics simulations of 807 proteins representative of diverse protein folds, to investigate the relationship between lysine-lysine distances in experimental starting structures and in simulation ensembles. We conclude that for DSS/BS(3), a distance constraint of 26-30 Å between Cα atoms is appropriate. This analysis provides a theoretical basis for the widespread practice of adding a tolerance to the crosslinker length when comparing XL-MS results to structures or in modeling. We also discuss the comparison of XL-MS results to MD simulations and known structures as a means to test and validate experimental XL-MS methods.


Subject(s)
Lysine/chemistry , Mass Spectrometry/methods , Molecular Dynamics Simulation , Cross-Linking Reagents/chemistry , Proteins/chemistry , Succinimides/chemistry
10.
Expert Opin Med Diagn ; 7(1): 37-51, 2013 Jan.
Article in English | MEDLINE | ID: mdl-23335946

ABSTRACT

INTRODUCTION: The advent of high throughput technologies capable of comprehensive analysis of genes, transcripts, proteins and other significant biological molecules has provided an unprecedented opportunity for the identification of molecular markers of disease processes. However, it has simultaneously complicated the problem of extracting meaningful molecular signatures of biological processes from these complex datasets. The process of biomarker discovery and characterization provides opportunities for more sophisticated approaches to integrating purely statistical and expert knowledge-based approaches. AREAS COVERED: In this review we will present examples of current practices for biomarker discovery from complex omic datasets and the challenges that have been encountered in deriving valid and useful signatures of disease. We will then present a high-level review of data-driven (statistical) and knowledge-based methods applied to biomarker discovery, highlighting some current efforts to combine the two distinct approaches. EXPERT OPINION: Effective, reproducible and objective tools for combining data-driven and knowledge-based approaches to identify predictive signatures of disease are key to future success in the biomarker field. We will describe our recommendations for possible approaches to this problem including metrics for the evaluation of biomarkers.

11.
IEEE Trans Vis Comput Graph ; 19(1): 130-40, 2013 Jan.
Article in English | MEDLINE | ID: mdl-22350197

ABSTRACT

The concept of preconditioning data (utilizing a power transformation as an initial step) for analysis and visualization is well established within the statistical community and is employed as part of statistical modeling and analysis. Such transformations condition the data to various inherent assumptions of statistical inference procedures, as well as making the data more symmetric and easier to visualize and interpret. In this paper, we explore the use of the Box-Cox family of power transformations to semiautomatically adjust visual parameters. We focus on time-series scaling, axis transformations, and color binning for choropleth maps. We illustrate the usage of this transformation through various examples, and discuss the value and some issues in semiautomatically using these transformations for more effective data visualization.

12.
IEEE Trans Vis Comput Graph ; 16(2): 205-20, 2010.
Article in English | MEDLINE | ID: mdl-20075482

ABSTRACT

As data sources become larger and more complex, the ability to effectively explore and analyze patterns among varying sources becomes a critical bottleneck in analytic reasoning. Incoming data contain multiple variables, high signal-to-noise ratio, and a degree of uncertainty, all of which hinder exploration, hypothesis generation/exploration, and decision making. To facilitate the exploration of such data, advanced tool sets are needed that allow the user to interact with their data in a visual environment that provides direct analytic capability for finding data aberrations or hotspots. In this paper, we present a suite of tools designed to facilitate the exploration of spatiotemporal data sets. Our system allows users to search for hotspots in both space and time, combining linked views and interactive filtering to provide users with contextual information about their data and allow the user to develop and explore their hypotheses. Statistical data models and alert detection algorithms are provided to help draw user attention to critical areas. Demographic filtering can then be further applied as hypotheses generated become fine tuned. This paper demonstrates the use of such tools on multiple geospatiotemporal data sets.


Subject(s)
Algorithms , Artificial Intelligence , Computer Graphics , Image Interpretation, Computer-Assisted/methods , Information Storage and Retrieval/methods , Models, Theoretical , User-Computer Interface , Computer Simulation
14.
BMC Med Inform Decis Mak ; 9: 21, 2009 Apr 21.
Article in English | MEDLINE | ID: mdl-19383138

ABSTRACT

BACKGROUND: Public health surveillance is the monitoring of data to detect and quantify unusual health events. Monitoring pre-diagnostic data, such as emergency department (ED) patient chief complaints, enables rapid detection of disease outbreaks. There are many sources of variation in such data; statistical methods need to accurately model them as a basis for timely and accurate disease outbreak methods. METHODS: Our new methods for modeling daily chief complaint counts are based on a seasonal-trend decomposition procedure based on loess (STL) and were developed using data from the 76 EDs of the Indiana surveillance program from 2004 to 2008. Square root counts are decomposed into inter-annual, yearly-seasonal, day-of-the-week, and random-error components. Using this decomposition method, we develop a new synoptic-scale (days to weeks) outbreak detection method and carry out a simulation study to compare detection performance to four well-known methods for nine outbreak scenarios. RESULT: The components of the STL decomposition reveal insights into the variability of the Indiana ED data. Day-of-the-week components tend to peak Sunday or Monday, fall steadily to a minimum Thursday or Friday, and then rise to the peak. Yearly-seasonal components show seasonal influenza, some with bimodal peaks.Some inter-annual components increase slightly due to increasing patient populations. A new outbreak detection method based on the decomposition modeling performs well with 90 days or more of data. Control limits were set empirically so that all methods had a specificity of 97%. STL had the largest sensitivity in all nine outbreak scenarios. The STL method also exhibited a well-behaved false positive rate when run on the data with no outbreaks injected. CONCLUSION: The STL decomposition method for chief complaint counts leads to a rapid and accurate detection method for disease outbreaks, and requires only 90 days of historical data to be put into operation. The visualization tools that accompany the decomposition and outbreak methods provide much insight into patterns in the data, which is useful for surveillance operations.


Subject(s)
Bioterrorism/statistics & numerical data , Disease Outbreaks/statistics & numerical data , Emergency Service, Hospital/statistics & numerical data , Mathematical Computing , Models, Statistical , Population Surveillance/methods , Respiratory Tract Infections/epidemiology , Algorithms , Cross-Sectional Studies , Data Collection/statistics & numerical data , Documentation/statistics & numerical data , Early Diagnosis , Humans , Indiana , Longitudinal Studies , Medical Informatics Computing , Poisson Distribution , Respiratory Tract Infections/diagnosis , Seasons , Syndrome
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