Monday, February 25, 2019

The effectiveness of hypnosis for pain relief was dependent upon hypnotic suggestibility & use of analgesic imagery, produced 42% & 29% pain reduction in high & medium suggestibles

The effectiveness of hypnosis for pain relief: A systematic review and meta-analysis of 85 controlled experimental trials. Trevor Thompson et al. Neuroscience & Biobehavioral Reviews, Volume 99, April 2019, Pages 298-310. https://doi.org/10.1016/j.neubiorev.2019.02.013

Highlights
• Analgesic effect of hypnosis examined in 85 experimental pain trials.
• Effectiveness was dependent upon hypnotic suggestibility and use of analgesic imagery.
• Hypnosis produced 42% & 29% pain reduction in high & medium suggestibles respectively.
• Minimal benefits found for low suggestibles.

Abstract: The current meta-analysis aimed to quantify the effectiveness of hypnosis for reducing pain and identify factors that influence efficacy. Six major databases were systematically searched for trials comparing hypnotic inductions with no-intervention control conditions on pain ratings, threshold and tolerance using experimentally-evoked pain models in healthy participants. Eighty-five eligible studies (primarily crossover trials) were identified, consisting of 3632 participants (hypnosis nö=ö2892, control nö=ö2646). Random effects meta-analysis found analgesic effects of hypnosis for all pain outcomes (gö=ö0.54-0.76, p’s<.001). Efficacy was strongly influenced by hypnotic suggestibility and use of direct analgesic suggestion. Specifically, optimal pain relief was obtained for hypnosis with direct analgesic suggestion administered to high and medium suggestibles, who respectively demonstrated 42% (pö<ö.001) and 29% (pö<ö.001) clinically meaningful reductions in pain. Minimal benefits were found for low suggestibles. These findings suggest that hypnotic intervention can deliver meaningful pain relief for most people and therefore may be an effective and safe alternative to pharmaceutical intervention. High quality clinical data is, however, needed to establish generalisability in chronic pain populations.

Keywords: PainHypnosisAnalgesiaReviewMeta-analysisSuggestion

Non-invasive neurophysiological measures of learning: A meta-analysis

Non-invasive neurophysiological measures of learning: A meta-analysis. Angelica M.Tinga, Tycho T. de Back, Max M. Louwerse. Neuroscience & Biobehavioral Reviews, Volume 99, April 2019, Pages 59-89. https://doi.org/10.1016/j.neubiorev.2019.02.001

Highlights
• Non-invasive neurophysiology yields large effect sizes in learning over time.
• Effect sizes of learning on neurophysiology are smaller than on behavior.
• Neurophysiology is influenced by individual differences and task-related aspects.
• These results suggest that neurophysiology is an appropriate measure in assessing learning.
• A model on learning, behavior and neurophysiology is proposed to guide future research.

Abstract: In a meta-analysis of 113 experiments we examined neurophysiological outcomes of learning, and the relationship between neurophysiological and behavioral outcomes of learning. Findings showed neurophysiology yielding large effect sizes, with the majority of studies examining electroencephalography and eye-related outcome measures. Effect sizes on neurophysiological outcomes were smaller than effect sizes on behavioral outcomes, however. Neurophysiological outcomes were, but behavioral outcomes were not, influenced by several modulating factors. These factors included the sensory system in which learning took place, number of learning days, whether feedback on performance was provided, and age of participants. Controlling for these factors resulted in the effect size differences between behavior and neurophysiology to disappear. The findings of the current meta-analysis demonstrate that neurophysiology is an appropriate measure in assessing learning, particularly when taking into account factors that could have an influence on neurophysiology. We propose a first model to aid further studies that are needed to examine the exact interplay between learning, neurophysiology, behavior, individual differences, and task-related aspects.

Memories of movement are replayed randomly (like Brownian motion) during sleep in rats

Memories of movement are replayed randomly during sleep. Elisabeth Guggenberger, Institute of Science and Technology Austria. Feb 25 2019. https://idw-online.de/de/news711026

Place cells in hippocampus randomly replay memories of movement in open environments – Study published in Neuron

Sleep is far from an inactive time for the brain: while rats (and humans) are asleep, neurons in the hippocampus fire rapidly. After a rat has repeatedly moved from one spot to another, the same neurons that fired while the rat moved “replay” this firing while the rat is asleep, i.e. they fire in the same, but much quicker, pattern. Previously, it was thought that replay patterns only correspond to trips rats had made repeatedly while awake. Writing in Neuron today, Postdoc Federico Stella and Professor Jozsef Csicsvari at the Institute of Science and Technology Austria (IST Austria), show that also when rats roam around freely, the hippocampus replays during sleep, but it does so in a random manner that resembles the famous Brownian motion known from randomly moving particles.

Place cells are cells in the hippocampus that fire when we (or the rats performing the experiments) are in a certain location. In order to form a memory, to be able to recall it and make a decision, they need to replay the firing pattern during sleep. The replay is easy to see in the data and happens at a fast pace, Csicsvari explains: “When a rat is asleep, the hippocampus is silent. But suddenly, lots of place cells fire, then the hippocampus falls silent again. This firing is very time-compressed. One second of firing activity during wakefulness corresponds to about 10 milliseconds of firing when the animal is asleep.”

Open environment replaces maze

Previous studies focused on replay after rats visited locations in a maze in a certain order. They found that the order in which place cells fire corresponds to the rat’s movement, and this replay pattern was also observed during sleep. In the new study, Csicsvari and Stella instead investigated what happens when a rat moves through an open field environment, like a box. The researchers let the animals run around the environment while they dropped food rewards randomly, all the while recording how up to 400 place cells fire at the same time. They then recorded how the same place cells fired while the rat was asleep.

What they found was unexpected, Csicsvari says. “Neurons fire in places the rat has explored, but the place sequence expressed by the firing follows random trajectories. Surprisingly, these random trajectories are similar to Brownian motion, the random movement seen when particles move, collide and change direction.” A precise statistic defines whether a random process follows Brownian motion or not. “When we did the stats, we found that the replay patterns follow Brownian motion. But this didn’t coincide with the actual movement of the animal – the rat hadn’t run about randomly. Instead, the complex circuit of the hippocampus generates a pattern that is like a simple physical situation.”

Advances in measurement techniques

This new finding was possible only because of the rapid advancement of recording techniques, says Stella. “Five years ago, it was thought that when a rat runs around randomly, only single places are replayed. Now that we can record from hundreds of place cells at the same time, we can distinguish firing between cells that are located close to each other – previously mistaken as the same area firing.”

Replay is an abstraction of experience

The random replay gives researchers an insight into the circuit dynamics of the hippocampus, Csicsvari explains. “In an experimental environment like ours, in which the animals don’t learn about the environment through for example hidden food rewards, the hippocampus generates firing trajectories on its own. Our work shows that the brain circuit itself has a complex dynamic, which influences how neurons fire. Experience probably acts as a constraint on what can possibly be replayed.”

Stella sees random replay as an abstraction of a rat’s experience. “This abstraction could be used for cognitive purposes, such as planning new behavior in the same environment, or for generalizing across different experiences.” In the future, Stella plans to investigate the role of replay in the post-processing of memories as well as how rats can use replay to plan behavior. “How is randomness affected when the rat has an intention? That’s what I’d like to know now.”

Originalpublikation:
Federico Stella, Peter Baracskay, Joseph O’Neill, and Jozsef Csicsvari: Hippocampal Reactivation of Random Trajectories Resembling Brownian Diffusion, Neuron, 2019
DOI: 10.1016/j.neuron.2019.01.052

Weitere Informationen:

A Breakthrough Is Claimed in Systemic Risk Monitoring: Brunetti, Harris and Mankad's Bank Holdings and Systemic Risk

A Breakthrough Is Claimed in Systemic Risk Monitoring. Katherine Heires. GARP, Feb 22, 2019. https://www.garp.org/#!/risk-intelligence/technology/quant-methods/a1Z1W000004nxXBUAY

American University’s Jeffrey Harris and two co-authors say their novel, more timely statistical approach can be applied to sectors beyond banking

More than 10 years since the global financial market meltdown, regulators and central bankers are confident that a stronger and well capitalized banking system is better able to withstand another major systemic shock. Yet proven measures of systemic risk, and particularly predictive tools that cut through market noise and volatility, remain hard to come by.

Bank Holdings and Systemic Risk, a paper published last year on the Federal Reserve Board website, puts forward what its co-authors claim is a unique and effective statistical approach that can monitor for systemic risk in banking. It can also be utilized for tracking change and risk in other complex sectors such as mutual funds, real estate investment trusts (REITs) and broker-dealer holdings.

The approach is based on what the paper calls a novel “statistical model and estimation framework” that regulators can use to “better assess, in a timely manner, concentrated risk within a bank without having to directly examine bank balance sheets. Moreover, the similarity of bank portfolios indicates interconnectedness, an important measure for the propagation of shocks.”

[...] Plans are under way to improve and expand upon the initial research and validation testing, with an updated paper to be released this summer.

“Many of the regulations we currently have in place in the financial sector somehow miss many of the risks out there in the real world,” says Prof. Harris, who served from September 2017 through May 2018 as the Securities and Exchange Commission's chief economist and director of its Division of Economic and Risk Analysis (DERA).

“If we can shed new light on those financial institutions and the obligations or counterparty obligations that they hold,“ Harris adds, “the better it will be. This paper is a way to add to the multiple dimensions of risk management out there.”

Past Attempts

Academics and official and government bodies such as the Financial Stability Board, the SEC's DERA and U.S. Treasury Office of Financial Research (OFR) have been hard at work on systemic risk indicators and tools. Pre-existing literature on the subject was compiled in a January 2012 paper, the first in the OFR's working paper series, by Massachusetts Institute of Technology professor Andrew Lo and three co-authors. A Financial Stress Index and Financial System Vulnerabilities Monitor are among the monitoring tools subsequently developed and maintained by the OFR.

[...]

Balance-Sheet Estimates

Brunetti, Harris and Mankad propose a new statistical method estimating the portfolio concentration or stock returns on balance sheet within each bank, along with an estimate of the common asset holdings across all banks. The former provides a measure of each bank's asset diversification; the latter, an indication the overall banking system's susceptibility to shocks.

It relies on an analysis of daily inter-bank trades and stock returns for individual banks and across all banks, culled from the e-MID European interbank deposit market, and publicly available stock return data, culled from annual reports and other, more current sources.

What's new about this approach, Harris explains, is that it focuses on the asset side of the balance sheet and identifies the concentration risk within each bank – the degree of concentration in one or a few assets. Other approaches tend to focus on the liability side or on capital adequacy, which is what the MES (marginal expected shortfall) and SRISK systemic risk monitoring approaches tend to do.

Faster Readings

Harris and his co-authors, in their paper, describe the asset-based approach as “more timely” and “a robust forecasting tool.”

They say that their testing indicates that the standard deviation and skewness of their measures generally lead, or are more predictive than, data published by the European Central Bank – the Composite Systemic Risk Index, the Simultaneous Default Probability and Sovereign Composite Systemic Risk Index, as well as EU macroeconomic indicators such as the Consumer Confidence Index (CCI) and Purchasing Managers' Index (PMI).

Harris says that risk insights can be produced with greater frequency than with quarterly or annual bank earnings statements.

“Instead of waiting for a quarterly report, you can see the buildup of risks within a bank much earlier,” Harris says. “This allows an auditor or central bank to investigate bank holdings and financial stability before the next quarter comes around,” and before significant risk starts to build up.

One factor contributing to the new formulation is the fact that “we now have access to incrementally better data about the interbank market, and so, any central bank would be able to replicate our approach.” However, Harris cautions that the e-MID does not provide 100% of market data related to the European bank sector, but rather 30% of interbank data in the European sphere. This limitation is overcome with machine learning tools.

Bayesian Framework

As described in the paper, the approach involves eight categories of bank data – cash, commercial loans, intangible assets, interbank assets, residential loans, investments, other holdings and remainder holdings.

A “novel Bayesian estimation framework” utilizes the two sets of data: stock returns and interbank lending data. This allows for the creation of a concentration index, which captures the degree of diversification of each bank's portfolio, and a similarity index, which captures how similar portfolio holdings are across banks.

“We view these two as indicators of system risk,” Harris says.

This data enables a “daily assessment of whether banks are strong or weak and what asset classes may be pushing them into a position of strength or weakness,” Harris says.  Regulators may prefer to assess monthly tallies.

Finally, the authors have tested and validated their approach from both a statistical perspective through various simulation exercises, and from an accounting perspective.

Technological Assist

Charles Kane, a senior lecturer at MIT Sloan, says that new approaches for monitoring systemic risk are welcome.

“What the developers of this new approach and others are trying to do now is apply the newest technology to be able to measure risk as quickly as possible,” Kane says. “I applaud any new technology or technology-based approach that can measure the liquidity of banking institutions.” He believes that aside from regulators, credit rating agencies could benefit.

Sam Malone, director of research at Moody's Analytics (not the credit rating business of Moody's Investors Service), says, “This new approach is a good idea because it allows for greater frequency in systemic risk measurement.” He also applauds the use of bank stock returns as a data input, something that Moody's employs in its own Systemic Risk Monitor tool, and the triangulation of this information with interbank trading data.

“When the credit cycle begins to turn, which it soon will in the U.S. and is already happening in China, we will need tools such as these to help us get a handle on what is going on,” Malone says.

European Research

Another recently proposed systemic risk monitor, with a standard set of financial stability indicators, is in “A new financial stability risk index to predict the near-term risk of recession,” a European Central Bank paper by senior financial stability expert Peter Welz and two others.

A 2016 paper from Paolo Giudici of the University of Pavia, Italy, and two others, “The multivariate nature of systemic risk: direct and common exposure,” looks at network structures as a way of identifying systemic risk in the integrated design of financial systems.

Sean Campbell, executive vice president and director of policy research at the Financial Services Forum, which represents the biggest, diversified U.S. financial institutions, believes that a clear definition of systemic risk and its causes – a prerequisite for better monitoring tools – is still lacking.

“We should be more demanding of the regulators,” Campbell insists, “asking them to explain more precisely what they mean by systemic risk. When we talk about bank capital, we know exactly what we mean, and when we talk about volatility, we know the meaning, but in the context of systemic risk, we are still in the early days of understanding.”

Campbell says he does appreciate efforts to produce “a more evidence-based way of assessing for systemic risk.”

Policy Limitations

In a forthcoming American Economic Review article, “Macroprudential Policy: What We've Learned, Don't Know and Need to Do,” Kristin J. Forbes, Jerome and Dorothy Lemelson professor of management at the MIT Sloan School, considers whether policymakers have done enough to prevent the next crisis.

“There are key issues around macroprudential policy about which we do not have sufficient understanding, such as on the new risks generated from the leakages and spillovers, on how to calibrate the different regulations (especially given political incentives), and on the potential risks to financial stability outside the mandates for most macroprudential authorities,” Forbes writes.

MIT's Kane says that no single approach is adequate to this complex task, and we still need to measure the sustainability, credit ratios and liability side of the banks' balance sheets and regulatory policies to realize the overall risk.

The Brunetti-Harris-Mankad framework is “not a silver bullet,” Kane says, noting that it is more focused on commercial banking as opposed to investment banking, where sophisticated, hard-to-measure derivative instruments can be a source of extreme risk.

Leverage and Stress Testing

Malone of Moody's Analytics says one limitation of the asset-based approach – in its initial iteration and testing – is that it does not look closely at leveraged loan activity in the U.S. and the way in which “as an asset class, we have seen a suboptimal amount of crowding,” a trend of concern to systemic risk watchers.

“It would be wonderful if they could extend their assessment and look at the rising risk in the leveraged loan asset class in the U.S., how U.S. banks' exposure is evolving in this area, and how this activity may be interconnected,” Malone says.

He believes that any thorough effort to monitor for systemic risk would require the inclusion of systemic risk metrics with U.S. CCAR regulatory stress tests. “It is curious that we haven't seen that,” Malone says.

Complementary Strengths

Kane says he is concerned about rising risks in the insurance sector, shadow banking, fintech and in cryptocurrency markets, and whether approaches are or are not being developed to measure such risks that may rise to the level of systemic concern.

Harris and colleagues acknowledge their approach's limitations, which they intend to address in future testing and iterations. The initial testing was limited to an analysis of 40 to 60 European banks. Future tests will include larger quantities of data specific to the U.S. banking system.

Harris is optimistic about the new tool's ability to advance systemic risk monitoring within banks, in particular when it is used in combination with approaches that monitor for network effects and interconnectedness.

“Our methods complement other approaches for assessing systemic risk that build on network science techniques,” Harris says, which is important at a time when both banks and regulators consume and analyze massive quantities of data.

“Integrating data from myriad products across various regulated and unregulated markets remains a significant challenge,” Harris says, adding that this new method provides a practical means for assessing complex financial institutions that trade hundreds of financial products in markets around the world.

[...]

Alternating Gender: Individuals Who Frequently Switch Between Feeling Male and Female

Case, Laura, Tracy Alderman, Radhika Gosavi, and Vilayanur S. Ramachandran. 2019. “Alternating Gender: Individuals Who Frequently Switch Between Feeling Male and Female.” PsyArXiv. February 25. doi:10.31234/osf.io/4y26g

Abstract: We characterize a small minority of individuals who self-report frequent, involuntary alternation in their gender identity (Alternating Gender; AG) in an attempt to glean insight into gender identity from a cognitive neuroscience perspective. We conducted an online survey of 73 AG individuals (44 male natal sex), with follow-up phone interviews and psychological assessment of 20 participants. Our results suggest that AG may be a previously uncharacterized gender phenomenon not explained by existing psychological diagnoses or commonly recognized gender identities. Further research on AG may yield novel insight into the neural and psychological correlates of gender identity by allowing the study of gender variation within individuals over time.

Love is analogous to money in human brain: coordinate-based and functional connectivity meta-analyses of social and monetary reward anticipation (VTA, ventral striatum, anterior insula, and SMA)

Love is analogous to money in human brain: coordinate-based and functional connectivity meta-analyses of social and monetary reward anticipation. Ruolei Gu et al. Neuroscience & Biobehavioral Reviews, https://doi.org/10.1016/j.neubiorev.2019.02.017

Highlights
•    We focus on the anticipation stage of monetary/social incentive delay task.
•    Neural signatures of social and monetary reward anticipation are compared.
•    Social and monetary reward anticipation engaged a common neural circuit.
•    The circuit includes VTA, ventral striatum, anterior insula, and SMA.
•    It mediates positive value, motivational relevance, and action preparation.

Abstract: Both social and material rewards play a crucial role in daily life and function as strong incentives for various goal-directed behaviors. However, it remains unclear whether the incentive effects of social and material reward are supported by common or distinct neural circuits. Here, we have addressed this issue by quantitatively synthesizing and comparing neural signatures underlying social (21 contrasts, 207 foci, 696 subjects) and monetary (94 contrasts, 1083 foci, 2060 subjects) reward anticipation. We demonstrated that social and monetary reward anticipation engaged a common neural circuit consisting of the ventral tegmental area, ventral striatum, anterior insula, and supplementary motor area, which are intensively connected during both task and resting states. Functional decoding findings indicate that this generic neural pathway mediates positive value, motivational relevance, and action preparation during reward anticipation, which together motivate individuals to prepare well for the response to the upcoming target. Our findings support the common neural currency hypothesis by providing the first meta-analytic evidence to quantitatively show the common involvement of brain regions in both social and material reward anticipation.

Sunday, February 24, 2019

Identified 116 independent variants influencing neuroticism; substantial genetic correlations found between neuroticism & depressive symptoms, major depressive disorder & subjective well-being

Association analysis in over 329,000 individuals identifies 116 independent variants influencing neuroticism. Michelle Luciano, Saskia P. Hagenaars, Gail Davies, W. David Hill, Toni-Kim Clarke, Masoud Shirali, Sarah E. Harris, Riccardo E. Marioni, David C. Liewald, Chloe Fawns-Ritchie, Mark J. Adams, David M. Howard, Cathryn M. Lewis, Catharine R. Gale, Andrew M. McIntosh & Ian J. Deary. Nature Genetics, volume 50, pages 6–11 (2018). https://www.nature.com/articles/s41588-017-0013-8

Abstract: Neuroticism is a relatively stable personality trait characterized by negative emotionality (for example, worry and guilt)1; heritability estimated from twin studies ranges from 30 to 50%2, and SNP-based heritability ranges from 6 to 15%3,4,5,6. Increased neuroticism is associated with poorer mental and physical health7,8, translating to high economic burden9. Genome-wide association studies (GWAS) of neuroticism have identified up to 11 associated genetic loci3,4. Here we report 116 significant independent loci from a GWAS of neuroticism in 329,821 UK Biobank participants; 15 of these loci replicated at P < 0.00045 in an unrelated cohort (N = 122,867). Genetic signals were enriched in neuronal genesis and differentiation pathways, and substantial genetic correlations were found between neuroticism and depressive symptoms (rg = 0.82, standard error (s.e.) = 0.03), major depressive disorder (MDD; rg = 0.69, s.e. = 0.07) and subjective well-being (rg = –0.68, s.e. = 0.03) alongside other mental health traits. These discoveries significantly advance understanding of neuroticism and its association with MDD.

Why do people differ in their achievement motivation? Non-shared environmental influences are the biggest contributos, followed by genes

Why do people differ in their achievement motivation? A nuclear twin family study. Lea Klassen, Eike Eifler, Anke Hufer, Rainer Riemann. Primenjena psihologija, Issue 4, pp 433-450. https://www.ceeol.com/search/article-detail?id=740662

Summary/Abstract: Although many previous studies have emphasized the role of environmental factors, such as parental home and school environment, on achievement motivation, classical twin studies suggest that both additive genetic influences and non-shared environmental influences explain interindividual differences in achievement motivation. By applying a Nuclear Twin Family Design on the data of the German nationally representative of TwinLife study, we analyzed genetic and environmental influences on achievement motivation in adolescents and young adults. As expected, the results provided evidence for the impact of additive genetic variation, non-additive genetic influences, as well as twin specific shared environmental influences. The largest amount of variance was attributed to non-shared environmental influences, showing the importance of individual experiences in forming differences in achievement motivation. Overall, we suggest a revision of models and theories that explain variation in achievement motivation by differences in familial socialization only.

Keywords: achievement motivation; behavioral genetics; Nu-clear Twin Family Design

Sexual Arousal in Men Exposed to Visual Stimuli With and Without Facial Blurring: Arousal in response to blurred stimuli was significantly higher than nonanonymized stimuli

A Comparison of Sexual Arousal in Men Exposed to Visual Stimuli With and Without Facial Blurring. Leah Rosetti et al. Sexual Abuse, Feb 22 2019, https://doi.org/10.1177/1079063219828784

Abstract: The role of the facial images in arousal and attraction has been examined before but never via penile plethysmography (PPG). This retrospective chart review aimed to determine the significance and magnitude of differences in arousal measured by PPG in 1,000 men exposed to slide stimuli with or without facial blurring in subjects of various ages. Arousal in response to blurred stimuli was significantly higher than nonanonymized stimuli with modest effect sizes for slides across age and gender categories. Facial blurring increased differences in arousal between adults and adolescents with a modest effect size. Our findings support the use of facial blurring to further protect the anonymity of models and limit the ethical and legal challenges of using slide stimuli with child models.

Keywords: penile plethysmography, sexual arousal, facial blurring, paraphilias

---
The effect of stimulus modality on arousal has been examined in depth. Videotapes and auditory stimuli of preferred sexual scenarios have proven to be more effective than still slides at provoking sexual arousal based on self-report and measured changes in penile tumescence in men with paraphilic and nonparaphilic interests (Fedoroff et al., 2009; Pithers & Laws, 1995). Research has also indicated that different types of stimuli are more effective at measuring differences in PPG arousal between men with different paraphilias. For example, auditory stimuli have been found to be most effective at eliciting arousal in response to sexual coercion, whereas visual stimuli tend to be more effective in discerning age and gender preferences (Lalumière & Harris, 1998).

Other elements of stimuli have been shown to contribute to arousal, though these elements are not necessarily controlled for within or between sites. For example, the presence of sound in visual stimuli has been shown to increase levels of arousal in subjects (Gaithier & Plaud, 1997). In addition, quality and realism of stimuli also play a role in arousal responses; response to still slides is affected by clarity and brightness, whereas response to audio is affected by loudness and pitch (Sekuler & Blake, 1994). Also, perceived attractiveness of the actors portrayed has an impact on arousal to video (Janssen, Carpenter, & Graham, 2003) and to still images (Landolt, Lalumière, & Quinsey, 1995). One element that has not been previously controlled for in stimuli but that we propose has an effect on arousal is the presence of facial blurring.

[...]

It may seem counterintuitive that removal of the face from a stimulus increases one’s sexual response as measured by PPG, as the face is replete with information regarding attractiveness. We theorize that facial blurring may increase sexual arousal by several mechanisms, including eliminating differences in perceived facial attrac-tiveness of models, refocusing attention to areas of the body that are implicated in sexual arousal, and allowing men to project their own preferences or fantasies onto the model.

The  importance  of  the  face  in  regulating  perceived  attractiveness  of  subjects  has  been  previously  studied  using  a  variety  of  techniques,  including  the  visual  process  method  and  eye  movement–tracking  studies.  In  the  visual  process  method,  partici-pants  uncover  one  body  part  at  a  time  to  determine  the  attractiveness  of  the  model  (Hassebrauck,  1998).  This  study  demonstrated  that  male  and  female  subjects  most  often chose the face as the first area to uncover when determining the attractiveness of a member of the opposite sex in a bathing suit. The author posited that facial attractive-ness played a much larger role than the attractiveness of the body, possibly because men look at the face for emotional information, such as level of sexual excitement. It is  possible  that  if  the  faces  of  the  models  used  in  our  stimuli  were  found  to  not  be  attractive to the subjects, that this moderated their arousal to the stimuli, whereas with-out facial features, participants had only the body features to impact arousal.

Eye-tracking studies have previously demonstrated that when viewing slides of mod-els, men focus first and longest on faces compared with other body parts (Attard-Johnson &  Bindemann,  2017;  Hall  et  al.,  2011;  Nummenmaa  et  al.,  2012).  Gaze  preference  toward  faces  was  also  shown  in  men  with  pedophilia  compared  with  healthy  controls  (Fromberger  et  al.,  2013).  When  examining  nude  adult  and  child  models,  men  with  pedophilia  fixated  longest  on  the  faces  of  children,  followed  by  the  pelvic  regions  of  children, whereas the healthy controls fixated on faces of adults for the longest period followed by the chest regions of adults. When comparing nude versus clothed models, men spend less time examining the face and more time looking at the chest and pelvic regions  in  nude  models  (Nummenmaa  et  al.,  2012).  This  study  further  demonstrated  pupillary dilation in response to viewing the chest and pelvic regions, suggesting that the participants were more aroused by these regions. Attard-Johnson and Bindemann (2017) found that when viewing clothed subjects, nude subjects, and nude subjects with both chest and genitals blurred, men viewed the faces longest for all three image types, but spent more time viewing the chest and pelvic region when the model was nude

.When the face is not available to provide emotional cues or contribute to a model’s perceived attractiveness, focus must be shifted elsewhere. Presumably, subjects would look  toward  the  chest  and  genitals  for  information  regarding  attractiveness  and  as  a  catalyst for sexual arousal. In one study that blurred the faces of their models to ensure the anonymity of their clothed (flesh colored vest and briefs) female volunteers, men tended to focus their attention on the chest and torso regions when rating attractiveness (Cornelissen, Hancock, Kiviniemi, George, & Tovée, 2009).

It is possible that facial blurring allows men to better able to focus on elements of stimuli that align with their specific sexual interests. Studies suggest that men’s fanta-sies are more likely, than those of women, to contain a focus on specific elements of a partner’s body and specific sexual acts (Arndt, Foehl, & Good, 1985; Barclay, 1973; Goldey, Avery, & van Anders, 2014; Joyal, Cossette, & Lapierre, 2015; Knafo & Jaffe, 1984; Zurbriggen & Yost, 2004).

Previously, Murphy, Ranger, Fedoroff, et al. (2015) proposed that audiotapes may be more effective for individuals who are aroused by very specific elements of a stim-ulus  set,  allowing  them  to  mentally  tailor  scenarios  to  fit  their  particular  interests,  which may not be possible with video or slide stimuli that are full of visual cues. Facial blurring may be a similar take on this concept, allowing men to refocus their attention on the most personally salient aspects of a stimulus to elicit arousal.

Furthermore,  facial  blurring  may  allow  subjects  to  depersonalize  the  model  to  a  degree that they have diminished concern for the ethical implications of their arousal. This technique serves to make models more generic, diminishing the guilt that a subject may feel for becoming aroused by a child or adolescent. In this way, models may become less likely to be viewed as individuals with emotions and rights, and more likely to be a blank canvas on which subjects can project their own sexual desires and fantasies.

We analyzed our data for differences in arousal between adult and underage model stimuli to determine whether facial blurring affected the difference between responses to  children  and  adults  by  using  differential  indices.  We  did  find  that  facial  blurring  increased differences in arousal between adults and adolescents, by increasing penile response to adults significantly more than to adolescent stimuli. It should also be noted that our effect size for this finding was modest. This finding did not hold for younger or older child categories, so the use of this technique is unlikely to improve sensitivity and specificity of stimuli.

Saturday, February 23, 2019

Being ugly helps you being victim (unless very ugly) and crime perpetrator (worse employment, more arrests, more illegal jobs); very unattractive persons are less victimized

"Ugly" Criminals and "Ugly" Victims. Brent Teasdale and Bonnie Berry. In Appearance Bias and Crime. Bonnie Berry (Ed.). Cambridge Univ Press, Mar 2019.

Conclusions, p57: