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Humans prefer attractive faces over unattractive ones. Our preference for attractive faces exists from early infancy and is robust across age, gender and ethnicity. The quest to define facial beauty either by the size or shape of isolated facial features, for example, eyes or lips or by the spatial relations between facial features dates back to antiquity, when the Ancient Greeks believed beauty was represented by a golden ratio of 1:1.618. Although there is little support for the golden ratio, studies have shown that averaging a group of faces results in a synthetic face more attractive than any of the originals. Furthermore, a sufficiently large increase in the distance between the eyes and mouth of an individual face can make the face appear grotesque. Any individual’s facial attractiveness can be optimized when the spatial relations between facial features approximate those of the average face. However, no evidence to date has confirmed this suggestion.
Two types of alterations can be made to the spatial relations between facial features of any individual face. One may alter the vertical distance between the eyes and the mouth; this alteration results in a change in the ratio of this distance to the face length, which is measured by the distance between the hairline and the chin. The ratio is henceforth referred to as the length ratio. The other alteration is to change the horizontal distance between the pupils; this change alters the ratio between this distance and the face width, which is measured between the inner edges of the ears. This ratio is henceforth referred to as the width ratio.
Using a regression analysis to determine the exact relation between the attractiveness score and length ratio, it is found that facial attractiveness follows a curvilinear function with length ratio. Face with an average length ratio is rated as more attractive than faces with other length ratios. This is further supported by the finding that attractiveness scores for faces without an average length ratio were significantly less than the mean attractiveness score for the faces with an average length ratio.
When an optimally attractive state for an individual face in terms of both length and width ratios is examined, it is found that facial attractiveness follows a curvilinear function with the width ratio. When an individual face’s length ratio is already optimal, the optimal width ratio maximizing its attractiveness is 46. Attractiveness scores for faces without an average width ratio were significantly less than the mean attractiveness score for the faces with an average width ratio. Attractiveness scores for faces without an average length ratio were significantly less than the mean attractiveness score for the faces with an average length ratio indicating preference for an ideal length ratio is independent of the width ratio.
In each individual face, there exists an optimally attractive state in terms of both length and width ratios. When the face’s eye-to-mouth distance is 36 percent of the face length and interocular distance is 46 percent of the face width, the face reaches its optimal attractiveness given its unique facial features. Further, although the absolute level of attractiveness may vary with differences in facial features, the optimal length and width ratios remain constant. These optimal, golden ratios correspond with those of an average face. Critically, this preference for average ratios reflects a true preference for the average and not a regression toward the mean. These results may explain some basic daily observations, such as why some hairstyles can make an unattractive face appear more attractive or vice versa. Changing one’s hairstyle may alter the perceived face length or face width, as well as their related length and width ratios, therefore affecting the perceived attractiveness of the face.
Many experiments on attractiveness involve comparing faces that differ in both facial features and spatial relations, but the presence of features that vary in attractiveness could obscure any effect of variation in feature spatial relation on attractiveness. Also, prior research comparing an average face to individual faces failed to discover the ideal length and width ratios for any individual face because the averaging process tends to not only average the spatial relations between facial features but also smoothes the facial features and skin texture. This smoothing effect could artificially increase the attractiveness of the average face, obscuring the effect of average spatial relations on facial attractiveness.
Identifying the optimal length and width ratios for individual facial beauty have attracted a tremendous amount of pursuit, but yet eluded discovery for centuries. Furthermore, the present findings suggest that although different faces vary greatly in absolute attractiveness, for any particular face, there is an optimal spatial relation between facial features that will reveal its intrinsic beauty.
It should be noted that the optimal spatial relations found can also coexist with preferences for sexually dimorphic features. A woman who has large lips, suggesting a strong mating potential, with average length and width ratios will always be more attractive than a woman with narrow lips and average length and width ratios. It is unknown, however, whether the preference for average length and width ratios is stronger than the desire for a pronounced sexually dimorphic trait. In other words, a woman with large lips and unattractive length and width ratios may or may not be preferred to a woman with narrow lips and ideal length and width ratios. Future research is necessary to assess the nature of this trade-off.
By definition, eye-mouth-eye angle involves both horizontal and vertical components. The preference for an average length ratio is independent of the width ratio. Therefore, it is important to note that despite the similarity between the two measures, they may actually measure two very different aspects of the face. While eye-mouth-eye angle provides information on the spatial relations between internal facial features, it also assesses the relation between the internal features and the external facial contour. Since faces are perceived holistically, it is important to consider the facial elements in the context of the whole face. It is possible for the length and width ratios to vary, while eye-mouth-eye angle stays the same, and vice versa. In the context of the whole face length ratios and width ratios appear independent, but within the localized area of the eyes and mouth, there may be an interaction between length and width.
Why should we find a face with an average length and width ratio attractive? Two existing theories provide explanations at two different levels. At the evolutionary level, it has been suggested that humans prefer to reproduce with other healthy mates. Generations of healthy mate selection may act as an evolutionary averaging process. This process leads to the propagation of healthy individuals with physical characteristics, including faces that approximate the population average. As a result, we are biologically predisposed to find average faces attractive. At the cognitive level, it is well established that after exposure to a series of exemplars from one object category, we form a prototype, that is to say, an average for this category. One robust consequence of prototype formation is that we find the prototype more attractive than any individual category members because the prototype is easier to process. Due to this same cognitive averaging mechanism, the average face is perceived as more attractive than any individual face. It is suggested that while the two theories provide different levels of explanation, they may work together to account for our preferences for the optimal length and width ratios for facial beauty. The evolutionary process predisposes us to find average length and width ratios attractive. The cognitive process prescribes what the average length and width ratios are by averaging the ratios of individual faces we have encountered to date.
Exposure to two common perfluorinated chemicals leads to osteoarthritis. Perfluorinated chemicals are used in more than 200 industrial processes and consumer products including certain stain and water-resistant fabrics, grease-proof paper food containers, personal care products, and other items. Because of their persistence, perfluorinated chemicals have become ubiquitous contaminants of humans and wildlife. The study, published in Environmental Health Perspectives, is the first to look at the associations between perfluorooctanoic acid and perfluorooctanesulfonic acid, and osteoarthritis, in a study population representative of the United States.
Perfluorooctanoic acid and perfluorooctanesulfonic acid exposures are associated with higher prevalence of osteoarthritis, particularly in women, a group that is disproportionately impacted by this chronic disease, says Sarah Uhl, who authored the study along with Yale Professor Michelle L. Bell and Tamarra James-Todd, an epidemiologist at the Harvard Medical School and Brigham and Women's Hospital. The research was the focus of Uhl's Master's of Environmental Science Program at the Yale School of Forestry and Environmental Studies.
Scientists analyzed data from six years of the National Health and Nutrition Examination Survey, which enabled them to account for factors such as age, income, and race/ethnicity. When the scientists looked at men and women separately, they found clear, strong associations for women, but not men. Women in the highest 25% of exposure to perfluorooctanoic acid had about two times the odds of having osteoarthritis compared to those in the lowest 25% of exposure.
Although production and usage of perfluorooctanoic acid and perfluorooctanesulfonic acid have declined due to safety concerns, human and environmental exposure to these chemicals remains widespread. Future studies are needed to establish temporality and shed light on possible biological mechanisms. Reasons for differences in these associations between men and women, if confirmed, also need further exploration. Better understanding the health effects of these chemicals and identifying any susceptible subpopulations could help to inform public health policies aimed at reducing exposures or associated health impacts.
Current views of human disease are based on simple correlation between clinical syndromes and pathological analysis dating from the late 19th century. Although, this approach to disease diagnosis, prognosis, and treatment has served the medical establishment and society well for many years, it has serious shortcomings for the modern era of the genomic medicine that stem from its reliance on reductionist principles of experimentation and analysis. Quantitative, holistic systems biology applied to human disease offers a unique approach for diagnosing established disease, defining disease predilection, and developing personalized treatment strategies that can take full advantage of modern molecular pathobiology and the comprehensive data sets that are rapidly becoming available for populations and individuals. In this way, systems pathobiology offers the promise of redefining our approach to disease and the field of medicine.
The translation of new knowledge about mechanisms that govern human pathobiology into effective preventive, diagnostic, and therapeutic strategies is a slow and cumbersome process. A major contributor to this translational delay is the use of the traditional characterization and definition of human disease, which dates to the 19th century and is largely based on Oslerian clinicopathological correlation. The Oslerian formalism for human disease links clinical presentation with pathological findings. As a result, disease is defined on the basis of the principal organ system in which symptoms and signs are manifest, and in which gross anatomic pathology and histopathology are correlated. This approach has held sway for over a century, and although there has been continual refinement of the pathological markers used for correlation, for example, biochemical measurements, immunohistochemistry, flow cytometry, and, more recently, molecular pathological analyses of expressed genes, the general principles remain the same as when the approach was first proposed. Current classification of disease pathophenotype is, then, the result of inductive generalization from clinicopathological evidence predicated on the law of reductive parsimony. This paradigm has been helpful to clinicians as it establishes syndromic patterns that limit the number of potential pathophenotypes they may need to consider. Although quite useful in an earlier era, classifying disease in this way vastly over generalizes pathophenotypes, does not usually take into consideration susceptibility states or preclinical disease manifestations, and cannot be used to individualize disease diagnosis or therapy.
Based on this history, it is hardly surprising that these conventional pathophenotypes are far too limited to be useful in the postgenomic era. A simple example illustrates this shortcoming. The classic Mendelian disorder, sickle cell disease, is caused by a single point mutation at position 6 of the β-chain of hemoglobin, which changes hemoglobin’s oxygen affinity and promotes polymerization under hypoxic conditions. Notwithstanding Mendelian predictions to the contrary, this simple biochemical phenotype and its corresponding monogenotype do not yield a single pathophenotype. Individuals with sickle cell disease can present with painful crisis, osteonecrosis, acute chest syndrome, stroke, profound anemia, or mild anemia. There are many reasons for these different clinical pathophenotypes, ranging from the presence of disease modifying genes, for example, hemoglobin F to environmental influences; for example, hypoxia. Clearly, even the simplest genetically determined disease is manifestly complex in its expression, a fundamental observation that emphasizes the importance of the genomic and environmental contexts within which disease evolves.
Although conventional reductionist pathophenotyping has guided steady progress in diagnostics and therapeutics for many years, it is fraught with shortcomings, some of which are highlighted by this example, that are particularly problematic for contemporary molecular and genomic analyses. Put another way, in using this sorely outdated approach to defining human disease, one can construct nosological silos that focus exclusively on end-stage pathological processes in a single organ largely driven by late-appearing, generic end-stage mechanisms rather than true disease-specific susceptibility determinants viewed in their holistic, systems-based complexity.
With this background, one can rationally catalog the limitations of traditional disease definition as disease is typically defined by late-appearing manifestations in a dysfunctional organ system, without regard for or knowledge of preclinical pathophenotype or susceptibility factors that precede overt abnormalities. Thus, the focus is not on the specific genetic or environmental susceptibility determinants of the disease phenotype, but, rather, on the late-appearing, intermediate pathophenotypes like generic endopathophenotypes, including inflammation, immunity, fibrosis, thrombosis, hemorrhage, cell proliferation, apoptosis, and necrosis within a given organ system. As a result, typical therapeutic strategies do not focus on truly unique, targeted disease determinants, but on these same intermediate pathophenotypes, for example, anti-inflammatory or antithrombotic therapies for acute myocardial infarction.
Conventional disease paradigms generally neglect underlying pathobiological mechanisms that may extend beyond the disease-defining organ system, and do not typically consider the molecular (deterministic) and environmental (stochastic) factors that govern disease evolution from susceptibility state to preclinical pathophenotype to overt pathophenotype.
Conventional definitions of disease are excessively inclusive of the range of pathophenotypes and are based on the pathophysiological characterizations largely of the premolecular era. These inclusive definitions of disease not only obscure subtle, but potentially important, differences among individuals with common clinical presentations, but also neglect underlying disease mechanisms that cross organ systems and may yield more appropriate and specific therapeutic targets.
Yet another dimension to this problem stems from the reductionist approach we use to identify disease mechanisms or therapeutic targets. Disease is rarely, if ever, a simple consequence of
an abnormality in a single effector gene product, but, rather, is a reflection of pathobiological processes (deterministic and stochastic) that interact in a complex network to yield pathophenotype, which may be viewed as an emergent property, that is to say, discernible only by appreciating the behavior of the network as a whole rather than of its component parts in reductionist isolation of a pathobiological system.
These shortcomings of conventional disease definition account for many limitations of major recent genomebased efforts to define disease determinants, for example, the weak effect size of linked alleles observed in genomewide association studies of complex disease and to design rational therapies, for example, the failure of >90% of drug candidates. Thus, solving this problem is not simply an exercise in nosology, but is essential for moving the entire health care enterprise forward to reduce the burden of human disease and suffering.
This highlights the clear need to reconsider and redefine the determinants of human disease. All disease is complex, even simple Mendelian disorders. Pathophenotype reflects the action of a deterministic, defective molecular network within a stochastic environmental context that modulates network function. Defined in this way, disease is the result of the output of a complex modular network of –omic and environmental nodes linked mechanistically to yield pathophenotype. With this background and rationale, we can redefine all human disease using a combination of approaches to identify systems-based pathobiological mechanisms that render one susceptible to preclinical and overt pathophenotypes. This approach challenges the existing disease paradigm directly, and is justifiable owing to the largely heuristic strategies that have been used to identify disease mechanisms and treatments to date.
Systems medicine is the application of systems biology approaches to medical research and medical practice. Its objective is to integrate a variety of biological and medical data at all relevant levels of cellular organization using the power of computational and mathematical modeling, to enable understanding of the pathophysiological mechanisms, prognosis, diagnosis and treatment of disease.
The clinical needs should be the driver for the applications of systems biology methods in medicine and for the evolution of the essential new technologies. The possible actions required are, systems biology approaches could guide clinical trial design, shortening times and costs. Re-defining clinical phenotypes based on molecular and dynamic parameters, discovering effective biomarkers of multiple nature for disease progression; clinically useful for risk, prognosis, diagnosis. Combinatorial therapy approach would be useful to find out a combination and lower doses of effective drugs, in particular in the case of co-morbidity, where more than one disease is affecting the patient, upgrading of drug development; optimizing drug efficacy, safety and delivery, timing and dosage of therapy. Finally, healthy individual are to be addressed in the long term.
Scientific areas for partnership in Systems Medicine includes understanding the pathophysiology of chronic diseases, multifactorial diseases like cancer, diabetes, obesity, metabolic disorders, aging through network analysis of disease processes, and the recognition of biomarkers for early diagnosis and prognosis and personalized treatment, combinatorial therapies and combinatorial drug screening and mixing of personalized genomics with personalized metabolomics, endocrinomics, proteomics and clinical phenotyping.
The major confrontation is for systems biology to furnish a change in the medical model in order to build the foundation for a prospective medicine that will be predictive, personalized, preventive and participatory. In order for systems medicine to become a reality, one needs coordinated vision of all relevant stakeholders and a field guide at the same level of ambition as the Human Genome project. In addition, the creation of a strong networking effort among funded systems biology projects is essential, in order to share information and resources on successful methodological approaches and tools with the broader systems biology and clinical community.
Recent years have seen the rapid emergence of systems biology as a new discipline. In the biomedical sciences, this trend is very apparent as research moves from a reductionist approach to a systems understanding model that attempts to understand biology and pathophysiology in an integrative manner, making use of the rapidly increasing amounts of novel (-omics) data and other relevant quantitative biological and medical data that are becoming available.
However, despite the spectacular advances in the post-genomic era, there exists a hiatus between experimental data and medical knowledge, and even a greater gap exists when we evaluate new knowledge in terms of clinical utility and benefit to patients. As a result, despite major technological advances, there are still obstacles that separate systems biology from medical applications. Systems medicine, a newly emerging area should aim the bridging of this gap.
Experts in a wide range of relevant disciplines from clinical, diagnostics and pharmaceutical areas, to high throughput –omics technologies, and computational and systems biology, including representatives from academia, industry, and funding agencies should get together to explore opportunities and challenges for the development of systems medicine. The aims are to analyze the state-of-the-art of systems biology for medical applications, identify key opportunities and bottlenecks for the translation of systems biology to medicine and the clinic, and identifying key research and policy areas for joint research in the short, medium and long term in order to make systems medicine a reality.