Literature DB >> 30460455

Model-Based and Model-Free Techniques for Amyotrophic Lateral Sclerosis Diagnostic Prediction and Patient Clustering.

Ming Tang1,2, Chao Gao1,2, Stephen A Goutman3, Alexandr Kalinin1,4, Bhramar Mukherjee2, Yuanfang Guan4, Ivo D Dinov5,6,7.   

Abstract

Amyotrophic lateral sclerosis (ALS) is a complex progressive neurodegenerative disorder with an estimated prevalence of about 5 per 100,000 people in the United States. In this study, the ALS disease progression is measured by the change of Amyotrophic Lateral Sclerosis Functional Rating Scale (ALSFRS) score over time. The study aims to provide clinical decision support for timely forecasting of the ALS trajectory as well as accurate and reproducible computable phenotypic clustering of participants. Patient data are extracted from DREAM-Phil Bowen ALS Prediction Prize4Life Challenge data, most of which are from the Pooled Resource Open-Access ALS Clinical Trials Database (PRO-ACT) archive. We employed model-based and model-free machine-learning methods to predict the change of the ALSFRS score over time. Using training and testing data we quantified and compared the performance of different techniques. We also used unsupervised machine learning methods to cluster the patients into separate computable phenotypes and interpret the derived subcohorts. Direct prediction of univariate clinical outcomes based on model-based (linear models) or model-free (machine learning based techniques - random forest and Bayesian adaptive regression trees) was only moderately successful. The correlation coefficients between clinically observed changes in ALSFRS scores relative to the model-based/model-free predicted counterparts were 0.427 (random forest) and 0.545(BART). The reliability of these results were assessed using internal statistical cross validation and well as external data validation. Unsupervised clustering generated very reliable and consistent partitions of the patient cohort into four computable phenotypic subgroups. These clusters were explicated by identifying specific salient clinical features included in the PRO-ACT archive that discriminate between the derived subcohorts. There are differences between alternative analytical methods in forecasting specific clinical phenotypes. Although predicting univariate clinical outcomes may be challenging, our results suggest that modern data science strategies are useful in clustering patients and generating evidence-based ALS hypotheses about complex interactions of multivariate factors. Predicting univariate clinical outcomes using the PRO-ACT data yields only marginal accuracy (about 70%). However, unsupervised clustering of participants into sub-groups generates stable, reliable and consistent (exceeding 95%) computable phenotypes whose explication requires interpretation of multivariate sets of features. HIGHLIGHTS: • Used a large ALS data archive of 8,000 patients consisting of 3 million records, including 200 clinical features tracked over 12 months. • Employed model-based and model-free methods to predict ALSFRS changes over time, cluster patients into cohorts, and derive computable phenotypes. • Research findings include stable, reliable, and consistent (95%) patient stratification into computable phenotypes. However, clinical explication of the results requires interpretation of multivariate information. Graphical Abstract ᅟ.

Entities:  

Keywords:  ALS; Amyotrophic lateral sclerosis; Big data; Data science; Decision support; Machine learning; Predictive analytics

Mesh:

Year:  2019        PMID: 30460455      PMCID: PMC6527505          DOI: 10.1007/s12021-018-9406-9

Source DB:  PubMed          Journal:  Neuroinformatics        ISSN: 1539-2791


  27 in total

1.  A hierarchical clustering method for analyzing functional MR images.

Authors:  P Filzmoser; R Baumgartner; E Moser
Journal:  Magn Reson Imaging       Date:  1999-07       Impact factor: 2.546

2.  Model-free functional MRI analysis using Kohonen clustering neural network and fuzzy C-means.

Authors:  K H Chuang; M J Chiu; C C Lin; J H Chen
Journal:  IEEE Trans Med Imaging       Date:  1999-12       Impact factor: 10.048

3.  Model-free functional MRI analysis based on unsupervised clustering.

Authors:  Axel Wismüller; Anke Meyer-Bäse; Oliver Lange; Dorothee Auer; Maximilian F Reiser; DeWitt Sumners
Journal:  J Biomed Inform       Date:  2004-02       Impact factor: 6.317

4.  Progression in ALS is not linear but is curvilinear.

Authors:  Paul H Gordon; Bin Cheng; Francois Salachas; Pierre-Francois Pradat; Gaelle Bruneteau; Philippe Corcia; Lucette Lacomblez; Vincent Meininger
Journal:  J Neurol       Date:  2010-06-08       Impact factor: 4.849

5.  RandomForest4Life: a Random Forest for predicting ALS disease progression.

Authors:  Torsten Hothorn; Hans H Jung
Journal:  Amyotroph Lateral Scler Frontotemporal Degener       Date:  2014-09       Impact factor: 4.092

6.  The ALSFRS-R: a revised ALS functional rating scale that incorporates assessments of respiratory function. BDNF ALS Study Group (Phase III).

Authors:  J M Cedarbaum; N Stambler; E Malta; C Fuller; D Hilt; B Thurmond; A Nakanishi
Journal:  J Neurol Sci       Date:  1999-10-31       Impact factor: 3.181

7.  Amyotrophic lateral sclerosis disease progression model.

Authors:  Roberto Gomeni; Maurizio Fava
Journal:  Amyotroph Lateral Scler Frontotemporal Degener       Date:  2013-09-26       Impact factor: 4.092

Review 8.  The Parkinson Progression Marker Initiative (PPMI).

Authors: 
Journal:  Prog Neurobiol       Date:  2011-09-14       Impact factor: 10.885

9.  Evidence of multidimensionality in the ALSFRS-R Scale: a critical appraisal on its measurement properties using Rasch analysis.

Authors:  Franco Franchignoni; Gabriele Mora; Andrea Giordano; Paolo Volanti; Adriano Chiò
Journal:  J Neurol Neurosurg Psychiatry       Date:  2013-03-20       Impact factor: 10.154

10.  Model-free characterization of brain functional networks for motor sequence learning using fMRI.

Authors:  Zsigmond Tamás Kincses; Heidi Johansen-Berg; Valentina Tomassini; Rose Bosnell; Paul M Matthews; Christian F Beckmann
Journal:  Neuroimage       Date:  2007-10-16       Impact factor: 6.556

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  7 in total

1.  ALS/SURV: a modification of the CAFS statistic.

Authors:  Stephen A Goutman; Morton B Brown; Merit Cudkowicz; Nazem Atassi; Eva L Feldman
Journal:  Amyotroph Lateral Scler Frontotemporal Degener       Date:  2019-07-23       Impact factor: 4.092

2.  Kimesurface Representation and Tensor Linear Modeling of Longitudinal Data.

Authors:  Rongqian Zhang; Yupeng Zhang; Yuyao Liu; Yunjie Guo; Yueyang Shen; Daxuan Deng; Yongkai Joshua Qiu; Ivo D Dinov
Journal:  Neural Comput Appl       Date:  2022-01-16       Impact factor: 5.102

3.  Identifying and predicting amyotrophic lateral sclerosis clinical subgroups: a population-based machine-learning study.

Authors:  Faraz Faghri; Fabian Brunn; Anant Dadu; Elisabetta Zucchi; Ilaria Martinelli; Letizia Mazzini; Rosario Vasta; Antonio Canosa; Cristina Moglia; Andrea Calvo; Michael A Nalls; Roy H Campbell; Jessica Mandrioli; Bryan J Traynor; Adriano Chiò
Journal:  Lancet Digit Health       Date:  2022-03-24

4.  New directions in clinical trials for frontotemporal lobar degeneration: Methods and outcome measures.

Authors:  Adam L Boxer; Michael Gold; Howard Feldman; Bradley F Boeve; Susan L-J Dickinson; Howard Fillit; Carole Ho; Robert Paul; Rodney Pearlman; Margaret Sutherland; Ajay Verma; Stephen P Arneric; Brian M Alexander; Bradford C Dickerson; Earl Ray Dorsey; Murray Grossman; Edward D Huey; Michael C Irizarry; William J Marks; Mario Masellis; Frances McFarland; Debra Niehoff; Chiadi U Onyike; Sabrina Paganoni; Michael A Panzara; Kenneth Rockwood; Jonathan D Rohrer; Howard Rosen; Robert N Schuck; Holly D Soares; Nadine Tatton
Journal:  Alzheimers Dement       Date:  2020-01-06       Impact factor: 21.566

Review 5.  Recent advances in the diagnosis and prognosis of amyotrophic lateral sclerosis.

Authors:  Stephen A Goutman; Orla Hardiman; Ammar Al-Chalabi; Adriano Chió; Masha G Savelieff; Matthew C Kiernan; Eva L Feldman
Journal:  Lancet Neurol       Date:  2022-03-22       Impact factor: 59.935

6.  Deep learning methods to predict amyotrophic lateral sclerosis disease progression.

Authors:  Corrado Pancotti; Giovanni Birolo; Cesare Rollo; Tiziana Sanavia; Barbara Di Camillo; Umberto Manera; Adriano Chiò; Piero Fariselli
Journal:  Sci Rep       Date:  2022-08-12       Impact factor: 4.996

7.  Predicting functional impairment trajectories in amyotrophic lateral sclerosis: a probabilistic, multifactorial model of disease progression.

Authors:  Erica Tavazzi; Sebastian Daberdaku; Alessandro Zandonà; Rosario Vasta; Vivian Drory; Marc Gotkine; Adriano Chiò; Barbara Di Camillo; Beatrice Nefussy; Christian Lunetta; Gabriele Mora; Jessica Mandrioli; Enrico Grisan; Claudia Tarlarini; Andrea Calvo; Cristina Moglia
Journal:  J Neurol       Date:  2022-03-10       Impact factor: 6.682

  7 in total

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