Miranda Shen’s research while affiliated with University of California, Berkeley and other places

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Publications (1)


Histograms of the relative frequency distribution of prediction probability values for selected substances. For each subplot, prediction probability values are represented along the horizontal axis, and relative frequency is represented along the vertical axis. Because the different substances have different numbers of sentences in their total experience report data, the vertical axis scales are normalized so that the maximum frequency value is plotted at the top of each subplot. The red line in each subplot depicts the overall distribution of prediction probabilities for the entire dataset. Prediction probability values were calculated by the trained logistic regression classifier model for each sentence in the dataset.
(A) Two-dimensional UMAP projection of all visual effect sentence embedding vectors. Each point corresponds to a single visual effect sentence, and colors denote different substances. The locations of some example sentences are indicated with arrows. (B) Illustration of visual effect categorization and calculation method. Seed sentences (listed in Table 3) were created to represent different regions of the visual effect vector space. Each visual effect was defined as the area within a threshold distance of a seed sentence vector. The proportions of visual effect sentences that fell within each category were then compared across substances. The black circles overlaid on the 2-dimensional point clouds demonstrate our procedure for categorizing visual effect sentences by calculating distances from seed sentence vectors (the center of each circle) and setting a distance threshold. Note that the analysis was conducted in the original 1,536-dimensional vector space, and the two-dimensional projection with overlaid circles/visual effect categories shown here is for illustration purposes.
Flowchart of method for calculating visual effect distributions across substances from the Erowid experience report dataset.
Proportion of visual effect sentences for each psychoactive substance. Substances are color coded by drug class.
Proportion of visual effect sentences for each psychedelic substance. Psychedelic substances are color coded by drug class.

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A novel method for quantitative analysis of subjective experience reports: application to psychedelic visual experiences
  • Article
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December 2024

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129 Reads

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1 Citation

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Miranda Shen

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Michael Silver

Introduction Psychedelic compounds such as LSD, psilocybin, mescaline, and DMT can dramatically alter visual perception. However, the extent to which visual effects of psychedelics consistently vary for different substances is an open question. The visual effects of a given psychedelic compound can range widely both across and within individuals, so datasets with large numbers of participants and descriptions of qualitative effects are required to adequately address this question with the necessary sensitivity. Methods Here we present an observational study with narrative self-report texts, leveraging the massive scale of the Erowid experience report dataset. We analyzed reports associated with 103 different psychoactive substances, with a median of 217 reports per substance. Thirty of these substances are standardly characterized as psychedelics, while 73 substances served as comparison substances. To quantitatively analyze these semantic data, we associated each sentence in the self-report dataset with a vector representation using an embedding model from OpenAI, and then we trained a classifier to identify which sentences described visual effects, based on the sentences’ embedding vectors. Results We observed that the proportion of sentences describing visual effects varies significantly and consistently across substances, even within the group of psychedelics. We then analyzed the distributions of psychedelics’ visual effect sentences across different categories of effects (for example, movement, color, or pattern), again finding significant and consistent variation. Discussion Overall, our findings indicate reliable variation across psychedelic substances’ propensities to affect vision and in their qualitative effects on visual perception.

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Citations (1)


... Similar types of distorJons are reported with serotonergic psychedelics. 20,[40][41][42] While largely anecdotal, limited psychophysical studies have explored some of these psychedelic phenomena systemaJcally. [43][44][45][46] Because visual distorJons depend on sensory sJmuli, they resemble classic visual illusions, 47 which can be studied using psychophysical modulaJon of sJmulus and task parameters. ...

Reference:

Visual Hallucinations in Serotonergic Psychedelics and Lewy Body Diseases
A novel method for quantitative analysis of subjective experience reports: application to psychedelic visual experiences