Literature DB >> 31667829

Prediction of lithium response using clinical data.

A Nunes1,2, R Ardau3, A Berghöfer4, A Bocchetta3, C Chillotti3, V Deiana5, J Garnham1, E Grof6,7, T Hajek1, M Manchia8,9, B Müller-Oerlinghausen10, M Pinna11, C Pisanu5, C O'Donovan1, G Severino5, C Slaney1, A Suwalska12,13, P Zvolsky14, P Cervantes15, M Del Zompo5, P Grof6,7, J Rybakowski12,16, L Tondo11,17, T Trappenberg2, M Alda1.   

Abstract

OBJECTIVE: Promptly establishing maintenance therapy could reduce morbidity and mortality in patients with bipolar disorder. Using a machine learning approach, we sought to evaluate whether lithium responsiveness (LR) is predictable using clinical markers.
METHOD: Our data are the largest existing sample of direct interview-based clinical data from lithium-treated patients (n = 1266, 34.7% responders), collected across seven sites, internationally. We trained a random forest model to classify LR-as defined by the previously validated Alda scale-against 180 clinical predictors.
RESULTS: Under appropriate cross-validation procedures, LR was predictable in the pooled sample with an area under the receiver operating characteristic curve of 0.80 (95% CI 0.78-0.82) and a Cohen kappa of 0.46 (0.4-0.51). The model demonstrated a particularly low false-positive rate (specificity 0.91 [0.88-0.92]). Features related to clinical course and the absence of rapid cycling appeared consistently informative.
CONCLUSION: Clinical data can inform out-of-sample LR prediction to a potentially clinically relevant degree. Despite the relevance of clinical course and the absence of rapid cycling, there was substantial between-site heterogeneity with respect to feature importance. Future work must focus on improving classification of true positives, better characterizing between- and within-site heterogeneity, and further testing such models on new external datasets.
© 2019 John Wiley & Sons A/S. Published by John Wiley & Sons Ltd.

Entities:  

Keywords:  bipolar disorder; clinical prediction; lithium response; machine learning

Year:  2019        PMID: 31667829     DOI: 10.1111/acps.13122

Source DB:  PubMed          Journal:  Acta Psychiatr Scand        ISSN: 0001-690X            Impact factor:   6.392


  9 in total

1.  Lessons from ecology for understanding the heterogeneity of bipolar disorder.

Authors:  Abraham Nunes; Katie Scott; Martin Alda
Journal:  J Psychiatry Neurosci       Date:  2022-10-18       Impact factor: 5.699

Review 2.  Depression Preceding Diagnosis of Bipolar Disorder.

Authors:  Claire O'Donovan; Martin Alda
Journal:  Front Psychiatry       Date:  2020-06-11       Impact factor: 4.157

Review 3.  Challenges and Future Prospects of Precision Medicine in Psychiatry.

Authors:  Mirko Manchia; Claudia Pisanu; Alessio Squassina; Bernardo Carpiniello
Journal:  Pharmgenomics Pers Med       Date:  2020-04-23

4.  Asymmetrical reliability of the Alda score favours a dichotomous representation of lithium responsiveness.

Authors:  Abraham Nunes; Thomas Trappenberg; Martin Alda
Journal:  PLoS One       Date:  2020-01-27       Impact factor: 3.240

Review 5.  Precision Psychiatry Applications with Pharmacogenomics: Artificial Intelligence and Machine Learning Approaches.

Authors:  Eugene Lin; Chieh-Hsin Lin; Hsien-Yuan Lane
Journal:  Int J Mol Sci       Date:  2020-02-01       Impact factor: 5.923

6.  Exemplar scoring identifies genetically separable phenotypes of lithium responsive bipolar disorder.

Authors:  Abraham Nunes; William Stone; Raffaella Ardau; Anne Berghöfer; Alberto Bocchetta; Caterina Chillotti; Valeria Deiana; Franziska Degenhardt; Andreas J Forstner; Julie S Garnham; Eva Grof; Tomas Hajek; Mirko Manchia; Manuel Mattheisen; Francis McMahon; Bruno Müller-Oerlinghausen; Markus M Nöthen; Marco Pinna; Claudia Pisanu; Claire O'Donovan; Marcella D C Rietschel; Guy Rouleau; Thomas Schulze; Giovanni Severino; Claire M Slaney; Alessio Squassina; Aleksandra Suwalska; Gustavo Turecki; Rudolf Uher; Petr Zvolsky; Pablo Cervantes; Maria Del Zompo; Paul Grof; Janusz Rybakowski; Leonardo Tondo; Thomas Trappenberg; Martin Alda
Journal:  Transl Psychiatry       Date:  2021-01-11       Impact factor: 6.222

7.  Prediction of lithium response using genomic data.

Authors:  William Stone; Abraham Nunes; Kazufumi Akiyama; Nirmala Akula; Raffaella Ardau; Jean-Michel Aubry; Lena Backlund; Michael Bauer; Frank Bellivier; Pablo Cervantes; Hsi-Chung Chen; Caterina Chillotti; Cristiana Cruceanu; Alexandre Dayer; Franziska Degenhardt; Maria Del Zompo; Andreas J Forstner; Mark Frye; Janice M Fullerton; Maria Grigoroiu-Serbanescu; Paul Grof; Ryota Hashimoto; Liping Hou; Esther Jiménez; Tadafumi Kato; John Kelsoe; Sarah Kittel-Schneider; Po-Hsiu Kuo; Ichiro Kusumi; Catharina Lavebratt; Mirko Manchia; Lina Martinsson; Manuel Mattheisen; Francis J McMahon; Vincent Millischer; Philip B Mitchell; Markus M Nöthen; Claire O'Donovan; Norio Ozaki; Claudia Pisanu; Andreas Reif; Marcella Rietschel; Guy Rouleau; Janusz Rybakowski; Martin Schalling; Peter R Schofield; Thomas G Schulze; Giovanni Severino; Alessio Squassina; Julia Veeh; Eduard Vieta; Thomas Trappenberg; Martin Alda
Journal:  Sci Rep       Date:  2021-01-13       Impact factor: 4.379

8.  Combining schizophrenia and depression polygenic risk scores improves the genetic prediction of lithium response in bipolar disorder patients.

Authors:  Klaus Oliver Schubert; Anbupalam Thalamuthu; Azmeraw T Amare; Joseph Frank; Fabian Streit; Mazda Adl; Nirmala Akula; Kazufumi Akiyama; Raffaella Ardau; Bárbara Arias; Jean-Michel Aubry; Lena Backlund; Abesh Kumar Bhattacharjee; Frank Bellivier; Antonio Benabarre; Susanne Bengesser; Joanna M Biernacka; Armin Birner; Cynthia Marie-Claire; Micah Cearns; Pablo Cervantes; Hsi-Chung Chen; Caterina Chillotti; Sven Cichon; Scott R Clark; Cristiana Cruceanu; Piotr M Czerski; Nina Dalkner; Alexandre Dayer; Franziska Degenhardt; Maria Del Zompo; J Raymond DePaulo; Bruno Étain; Peter Falkai; Andreas J Forstner; Louise Frisen; Mark A Frye; Janice M Fullerton; Sébastien Gard; Julie S Garnham; Fernando S Goes; Maria Grigoroiu-Serbanescu; Paul Grof; Ryota Hashimoto; Joanna Hauser; Urs Heilbronner; Stefan Herms; Per Hoffmann; Liping Hou; Yi-Hsiang Hsu; Stephane Jamain; Esther Jiménez; Jean-Pierre Kahn; Layla Kassem; Po-Hsiu Kuo; Tadafumi Kato; John Kelsoe; Sarah Kittel-Schneider; Ewa Ferensztajn-Rochowiak; Barbara König; Ichiro Kusumi; Gonzalo Laje; Mikael Landén; Catharina Lavebratt; Marion Leboyer; Susan G Leckband; Mario Maj; Mirko Manchia; Lina Martinsson; Michael J McCarthy; Susan McElroy; Francesc Colom; Marina Mitjans; Francis M Mondimore; Palmiero Monteleone; Caroline M Nievergelt; Markus M Nöthen; Tomas Novák; Claire O'Donovan; Norio Ozaki; Urban Ösby; Sergi Papiol; Andrea Pfennig; Claudia Pisanu; James B Potash; Andreas Reif; Eva Reininghaus; Guy A Rouleau; Janusz K Rybakowski; Martin Schalling; Peter R Schofield; Barbara W Schweizer; Giovanni Severino; Tatyana Shekhtman; Paul D Shilling; Katzutaka Shimoda; Christian Simhandl; Claire M Slaney; Alessio Squassina; Thomas Stamm; Pavla Stopkova; Fasil Tekola-Ayele; Alfonso Tortorella; Gustavo Turecki; Julia Veeh; Eduard Vieta; Stephanie H Witt; Gloria Roberts; Peter P Zandi; Martin Alda; Michael Bauer; Francis J McMahon; Philip B Mitchell; Thomas G Schulze; Marcella Rietschel; Bernhard T Baune
Journal:  Transl Psychiatry       Date:  2021-11-29       Impact factor: 7.989

Review 9.  A critical evaluation of dynamical systems models of bipolar disorder.

Authors:  Abraham Nunes; Selena Singh; Jared Allman; Suzanna Becker; Abigail Ortiz; Thomas Trappenberg; Martin Alda
Journal:  Transl Psychiatry       Date:  2022-09-28       Impact factor: 7.989

  9 in total

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