Alternative splicing events as peripheral biomarkers for motor learning deficit caused by adverse prenatal environments

Author:

Dutta Dipankar J.1,Sasaki Junko12,Bansal Ankush1,Sugai Keiji12,Yamashita Satoshi1,Li Guojiao2,Lazarski Christopher3,Wang Li1,Sasaki Toru4ORCID,Yamashita Chiho1,Carryl Heather1,Suzuki Ryo2,Odawara Masato2,Imamura Kawasawa Yuka5,Rakic Pasko6,Torii Masaaki17,Hashimoto-Torii Kazue17ORCID

Affiliation:

1. Center for Neuroscience Research, Children’s National Hospital, Washington, DC 20010

2. Department of Diabetes, Endocrinology and Metabolism, Tokyo Medical University, Tokyo 160-8402, Japan

3. Center for Cancer and Immunology Research, Children’s National Hospital, Washington, DC 20010

4. Department of Obstetrics and Gynecology, Tokyo Medical University, Tokyo 160-8402, Japan

5. Department of Biochemistry and Molecular Biology, Pennsylvania State University College of Medicine, Hershey, PA 17033

6. Kavli Institute for Neuroscience, Yale School of Medicine, New Haven, CT 06520

7. Department of Pediatrics, Pharmacology and Physiology, George Washington University, Washington, DC 20010

Abstract

Severity of neurobehavioral deficits in children born from adverse pregnancies, such as maternal alcohol consumption and diabetes, does not always correlate with the adversity’s duration and intensity. Therefore, biological signatures for accurate prediction of the severity of neurobehavioral deficits, and robust tools for reliable identification of such biomarkers, have an urgent clinical need. Here, we demonstrate that significant changes in the alternative splicing (AS) pattern of offspring lymphocyte RNA can function as accurate peripheral biomarkers for motor learning deficits in mouse models of prenatal alcohol exposure (PAE) and offspring of mother with diabetes (OMD). An aptly trained deep-learning model identified 29 AS events common to PAE and OMD as superior predictors of motor learning deficits than AS events specific to PAE or OMD. Shapley-value analysis, a game-theory algorithm, deciphered the trained deep-learning model’s learnt associations between its input, AS events, and output, motor learning performance. Shapley values of the deep-learning model’s input identified the relative contribution of the 29 common AS events to the motor learning deficit. Gene ontology and predictive structure–function analyses, using Alphafold2 algorithm, supported existing evidence on the critical roles of these molecules in early brain development and function. The direction of most AS events was opposite in PAE and OMD, potentially from differential expression of RNA binding proteins in PAE and OMD. Altogether, this study posits that AS of lymphocyte RNA is a rich resource, and deep-learning is an effective tool, for discovery of peripheral biomarkers of neurobehavioral deficits in children of diverse adverse pregnancies.

Funder

HHS | NIH | NIDA | National Drug Abuse Treatment Clinical Trials Network

HHS | NIH | National Institute on Alcohol Abuse and Alcoholism

Publisher

Proceedings of the National Academy of Sciences

Subject

Multidisciplinary

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