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Review
. 2019 Feb 4;9(1):63.
doi: 10.1038/s41398-019-0390-0.

Neurodevelopmental heterogeneity and computational approaches for understanding autism

Affiliations
Review

Neurodevelopmental heterogeneity and computational approaches for understanding autism

Suma Jacob et al. Transl Psychiatry. .

Abstract

In recent years, the emerging field of computational psychiatry has impelled the use of machine learning models as a means to further understand the pathogenesis of multiple clinical disorders. In this paper, we discuss how autism spectrum disorder (ASD) was and continues to be diagnosed in the context of its complex neurodevelopmental heterogeneity. We review machine learning approaches to streamline ASD's diagnostic methods, to discern similarities and differences from comorbid diagnoses, and to follow developmentally variable outcomes. Both supervised machine learning models for classification outcome and unsupervised approaches to identify new dimensions and subgroups are discussed. We provide an illustrative example of how computational analytic methods and a longitudinal design can improve our inferential ability to detect early dysfunctional behaviors that may or may not reach threshold levels for formal diagnoses. Specifically, an unsupervised machine learning approach of anomaly detection is used to illustrate how community samples may be utilized to investigate early autism risk, multidimensional features, and outcome variables. Because ASD symptoms and challenges are not static within individuals across development, computational approaches present a promising method to elucidate subgroups of etiological contributions to phenotype, alternative developmental courses, interactions with biomedical comorbidities, and to predict potential responses to therapeutic interventions.

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Conflict of interest statement

S.J. is part of Roche multisite ASD treatment trials and has been a site-investigator for an investigator initiated, federally funded clinical trial in ASD. The remaining authors declare that they have no conflict of interest.

Figures

Fig. 1
Fig. 1
a Distribution of local outlier function (LOF) scores. Scores greater than 1.32 are classified as anomalies. Although histograms are 1-dimensional, scores are calculated from the data records of each participant which are multidimensional. As an analogy, the distance between two points in 3- dimensional space is a 1-dimensional number. As a test, if the 80 anomalous toddlers are omitted and LOF scores are recomputed, only 6 subjects obtain LOF scores greater than 1.32. Note these 6 had initial LOF scores near the 1.32 threshold. For this example, 5% was chosen as the LOF threshold because it corresponded to a point at which the LOF distribution changed from a “bump,” i.e., a somewhat normal looking distribution to a more uniform distribution. Such a region represents a different and lower density area of the data space where anomalies are expected to be found. For other datasets, the appropriate LOF threshold might correspond to a different percentage of the data, e.g., 1 or 10%. As an example of an unsupervised anomaly detection approach, we were able to determine that 80 children had LOF > 1.32 scores out of the overall sample of 1570 toddlers. b Overlap between anomalies detected in full sample vs. 1000 random samples of half the data. Many anomaly detection routines are also relatively robust to sample size. To illustrate this, we randomly sampled the data set to obtain 1000 half size samples. The overlap in anomalies found in the samples with the full data set is shown. On average, 74% of the anomalies (LOF > 1.32) found in the half size samples occurred in the full data set. Furthermore, the correspondence between the LOF scores in the full sample and the half sized sample is about 91%. On average 94% of the anomalies (LOF > 1.32) found in the half size samples have an LOF score of 1.22 or more in the full data set. All of this is a sign that LOF scores are relatively stable for the sample under consideration. The goal of this evaluation was to test how much the LOF score depended on the sample size and thus, whether a threshold determined as anomalous in one sample could be used for a smaller sample. More generally, we evaluated how much the LOF score varied by comparing the LOF scores of a subject in the half size samples to the LOF score in the full sample. c An alternative way to view the sample data from LOF scores shows number of subjects outside of two standard deviations. d In addition, the data can be plotted to illustrate the levels of correlations between variables assessed in a matrix plot. Multiple waves of data collection for ages 18–24 months, would allow for testing and retesting of the reliability of these patterns with these dimensions of observations as the sample size increases

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