Genome data based deep learning identified new genes predicting pharmacological treatment response of attention deficit hyperactivity disorder.

Journal: Translational psychiatry
PMID:

Abstract

Although the efficacy of pharmacy in the treatment of attention deficit/hyperactivity disorder (ADHD) has been well established, the lack of predictors of treatment response poses great challenges for personalized treatment. The current study employed a comprehensive approach, combining genome-wide association analyses (GWAS) and deep learning (DL) methods, to elucidate the genetic underpinnings of pharmacological treatment response in ADHD. Based on genotype data of medication-naïve patients with ADHD who received pharmacological treatments for 12 weeks, the current study performed GWAS using the percentage changes in ADHD-RS score as phenotype. Then, DL models were constructed to predict percentage changes in symptom scores using genetic variants selected based on four different genome-wide P thresholds (E-02, E-03, E-04, E-05) as inputs. The current GWAS results identified two significant loci (rs10880574, P = 2.39E-09; rs2000900, P = 3.31E-09) which implicated two genes, TMEM117 and MYO5B, that were primarily associated with both brain- and gut-related disorders. The convolutional neural network (CNN) model, using variants with genome-wide P values less than E-02 (5516 SNPs), demonstrated the best performance with mean squared error (MSE) equals 0.012 (Accuracy = 0.83; Sensitivity = 0.90; Specificity = 0.75) in the validation dataset, 0.081 in an independent test dataset (Acc = 0.61, Sensitivity = 0.81; Specificity = 0.26). Notably, the variant that contributed most to the CNN model was NKAIN2, an ADHD-related gene, which is also associated with metabolic processes. To conclude, the integration of GWAS and DL methods revealed new genes contribute to ADHD pharmacological treatment responses, and underscored the interplay between neural systems and metabolic processes, potentially providing critical insights into precision treatment. Furthermore, our CNN model exhibited good performance in an independent dataset, encouraged future studies and implied potential clinical applications.

Authors

  • Yilu Zhao
    Peking University Sixth Hospital, Peking University Institute of Mental Health, National Clinical Research Center for Mental Disorders, (Peking University S+ixth Hospital), NHC Key Laboratory of Mental Health (Peking University), Beijing, China.
  • Zhao Fu
    Peking University Sixth Hospital, Peking University Institute of Mental Health, National Clinical Research Center for Mental Disorders, (Peking University S+ixth Hospital), NHC Key Laboratory of Mental Health (Peking University), Beijing, China.
  • Eric J Barnett
    Department of Neuroscience and Physiology, SUNY Upstate Medical University, Syracuse, New York, United States of America.
  • Ning Wang
    Qilu Hospital of Shandong University Dezhou Hospital, Dezhou, Shandong, China.
  • Kangfuxi Zhang
    Peking University Sixth Hospital, Peking University Institute of Mental Health, National Clinical Research Center for Mental Disorders, (Peking University S+ixth Hospital), NHC Key Laboratory of Mental Health (Peking University), Beijing, China.
  • Xuping Gao
    Peking University Sixth Hospital, Peking University Institute of Mental Health, National Clinical Research Center for Mental Disorders, (Peking University S+ixth Hospital), NHC Key Laboratory of Mental Health (Peking University), Beijing, China.
  • Xiangyu Zheng
    School of Electrical Engineering, Xi'an University of Technology, Xi'an, Shaanxi, China.
  • Junbin Tian
    Peking University Sixth Hospital, Peking University Institute of Mental Health, National Clinical Research Center for Mental Disorders, (Peking University S+ixth Hospital), NHC Key Laboratory of Mental Health (Peking University), Beijing, China.
  • Hui Zhang
    Department of Pulmonary Vessel and Thrombotic Disease, Sixth Medical Center, Chinese PLA General Hospital, Beijing, China.
  • XueTong Ding
    School of Engineering Medicine, Beihang University, Beijing, China.
  • Shaoxian Li
    State Key Laboratory of Cognitive Neuroscience and Learning, Beijing Normal University, Beijing, China.
  • Shuyu Li
    School of Economics and Management, China University of Petroleum (East China), Qingdao, 266580, People's Republic of China.
  • Qingjiu Cao
    Peking University Sixth Hospital, Peking University Institute of Mental Health, National Clinical Research Center for Mental Disorders, (Peking University S+ixth Hospital), NHC Key Laboratory of Mental Health (Peking University), Beijing, China.
  • Suhua Chang
    Peking University Sixth Hospital, Peking University Institute of Mental Health, NHC Key Laboratory of Mental Health (Peking University), National Clinical Research Center for Mental Disorders (Peking University Sixth Hospital), Beijing, People's Republic of China.
  • Yufeng Wang
    People's Hospital of Gaoxin, 768 Fudong Road, Weifang 261205, China.
  • Stephen V Faraone
    Department of Psychiatry, State University of New York Upstate Medical University, Syracuse.
  • Li Yang
    Department of Pharmacy, Beijing Tiantan Hospital, Capital Medical University, Beijing, China.