411 research outputs found

    Data mining applied to the cognitive rehabilitation of patients with acquired brain injury

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    Acquired brain injury (ABI) is one of the leading causes of death and disability in the world and is associated with high health care costs as a result of the acute treatment and long term rehabilitation involved. Different algorithms and methods have been proposed to predict the effectiveness of rehabilitation programs. In general, research has focused on predicting the overall improvement of patients with ABI. The purpose of this study is the novel application of data mining (DM) techniques to predict the outcomes of cognitive rehabilitation in patients with ABI. We generate three predictive models that allow us to obtain new knowledge to evaluate and improve the effectiveness of the cognitive rehabilitation process. Decision tree (DT), multilayer perceptron (MLP) and general regression neural network (GRNN) have been used to construct the prediction models. 10-fold cross validation was carried out in order to test the algorithms, using the Institut Guttmann Neurorehabilitation Hospital (IG) patients database. Performance of the models was tested through specificity, sensitivity and accuracy analysis and confusion matrix analysis. The experimental results obtained by DT are clearly superior with a prediction average accuracy of 90.38%, while MLP and GRRN obtained a 78.7% and 75.96%, respectively. This study allows to increase the knowledge about the contributing factors of an ABI patient recovery and to estimate treatment efficacy in individual patients

    Artificial metaplasticity prediction model for cognitive rehabilitation outcome in acquired brain injury patients

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    Objective The main purpose of this research is the novel use of artificial metaplasticity on multilayer perceptron (AMMLP) as a data mining tool for prediction the outcome of patients with acquired brain injury (ABI) after cognitive rehabilitation. The final goal aims at increasing knowledge in the field of rehabilitation theory based on cognitive affectation. Methods and materials The data set used in this study contains records belonging to 123 ABI patients with moderate to severe cognitive affectation (according to Glasgow Coma Scale) that underwent rehabilitation at Institut Guttmann Neurorehabilitation Hospital (IG) using the tele-rehabilitation platform PREVIRNEC©. The variables included in the analysis comprise the neuropsychological initial evaluation of the patient (cognitive affectation profile), the results of the rehabilitation tasks performed by the patient in PREVIRNEC© and the outcome of the patient after a 3–5 months treatment. To achieve the treatment outcome prediction, we apply and compare three different data mining techniques: the AMMLP model, a backpropagation neural network (BPNN) and a C4.5 decision tree. Results The prediction performance of the models was measured by ten-fold cross validation and several architectures were tested. The results obtained by the AMMLP model are clearly superior, with an average predictive performance of 91.56%. BPNN and C4.5 models have a prediction average accuracy of 80.18% and 89.91% respectively. The best single AMMLP model provided a specificity of 92.38%, a sensitivity of 91.76% and a prediction accuracy of 92.07%. Conclusions The proposed prediction model presented in this study allows to increase the knowledge about the contributing factors of an ABI patient recovery and to estimate treatment efficacy in individual patients. The ability to predict treatment outcomes may provide new insights toward improving effectiveness and creating personalized therapeutic interventions based on clinical evidence

    Personalized Web-Based Cognitive Rehabilitation Treatments for Patients with Traumatic Brain Injury : Cluster Analysis

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    Funding: This study was partially funded by the INNOBRAIN project: New Technologies for Innovation in Cognitive Stimulation and Rehabilitation (COMRDI15-1-0017). ACCIÓ-Comunitat RIS3CAT d'innovació en salut NEXTHEALTH (COM15-1-0004) cofinanced this project under the FEDER Catalonia 2014-2020 Operational ProgramTraumatic brain injury (TBI) is a leading cause of disability worldwide. TBI is a highly heterogeneous disease, which makes it complex for effective therapeutic interventions. Cluster analysis has been extensively applied in previous research studies to identify homogeneous subgroups based on performance in neuropsychological baseline tests. Nevertheless, most analyzed samples are rarely larger than a size of 100, and different cluster analysis approaches and cluster validity indices have been scarcely compared or applied in web-based rehabilitation treatments. The aims of our study were as follows: (1) to apply state-of-the-art cluster validity indices to different cluster strategies: hierarchical, partitional, and model-based, (2) to apply combined strategies of dimensionality reduction by using principal component analysis and random forests and perform stability assessment of the final profiles, (3) to characterize the identified profiles by using demographic and clinically relevant variables, and (4) to study the external validity of the obtained clusters by considering 3 relevant aspects of TBI rehabilitation: Glasgow Coma Scale, functional independence measure, and execution of web-based cognitive tasks. This study was performed from August 2008 to July 2019. Different cluster strategies were executed with Mclust, factoextra, and cluster R packages. For combined strategies, we used the FactoMineR and random forest R packages. Stability analysis was performed with the fpc R package. Between-group comparisons for external validation were performed using 2-tailed t test, chi-square test, or Mann-Whitney U test, as appropriate. We analyzed 574 adult patients with TBI (mostly severe) who were undergoing web-based rehabilitation. We identified and characterized 3 clusters with strong internal validation: (1) moderate attentional impairment and moderate dysexecutive syndrome with mild memory impairment and normal spatiotemporal perception, with almost 66% (111/170) of the patients being highly educated (P <.05); (2) severe dysexecutive syndrome with severe attentional and memory impairments and normal spatiotemporal perception, with 49.2% (153/311) of the patients being highly educated (P <.05); (3) very severe cognitive impairment, with 45.2% (42/93) of the patients being highly educated (P <.05). We externally validated them with severity of injury (P =.006) and functional independence assessments: cognitive (P <.001), motor (P <.001), and total (P <.001). We mapped 151,763 web-based cognitive rehabilitation tasks during the whole period to the 3 obtained clusters (P <.001) and confirmed the identified patterns. Stability analysis indicated that clusters 1 and 2 were respectively rated as 0.60 and 0.75; therefore, they were measuring a pattern and cluster 3 was rated as highly stable. Cluster analysis in web-based cognitive rehabilitation treatments enables the identification and characterization of strong response patterns to neuropsychological tests, external validation of the obtained clusters, tailoring of cognitive web-based tasks executed in the web platform to the identified profiles, thereby providing clinicians a tool for treatment personalization, and the extension of a similar approach to other medical conditions

    Data mining applied to neurorehabilitation data

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    Tese de mestrado integrado, Engenharia Biomédica e Biofísica (Engenharia Clínica e Instrumentação Médica) Universidade de Lisboa, Faculdade de Ciências, 2017Apesar de não serem a principal causa de morte no Mundo, as lesões cerebrais são talvez a principal razão de existirem tantos casos de pessoas que veem a sua vida quotidiana afetada. Tal acontece devido a grandes dificuldades cognitivas que podem ser derivadas de um acidente de automóvel, de uma queda, da presença de um tumor, de um acidente vascular cerebral, da exposição a substâncias tóxicas ou de uma outra qualquer situação que tenha envolvido uma lesão do cérebro. De entre este tipo de lesões podem considerar-se aquelas que são provenientes de traumas por forças externas, ou seja, as chamadas lesões cerebrais traumáticas ou traumatismos crânio-encefálicos. É precisamente em pessoas que sofreram uma lesão desse tipo que se foca este estudo. Em pessoas que, depois dessas lesões, foram sujeitas a um tratamento de neuro reabilitação. Este tratamento, baseado na realização de tarefas especialmente desenhadas para estimular a reorganização das ligações neuronais, permite que os doentes tenham a possibilidade de voltar a conseguir realizar tarefas do dia-a-dia com a menor dificuldade possível. O objetivo da realização destas tarefas é a estimulação da capacidade de plasticidade cerebral, responsável pelo desenvolvimento das conexões sinápticas desde o nascimento e que permite ao cérebro voltar a estabelecer o seu funcionamento normal depois de uma lesão. Naturalmente, o grau de afetação de uma pessoa depende do tipo de lesão e tem uma grande influência não só no tempo de recuperação física e mental, como também no seu estado final. O estudo documentado neste relatório de estágio constitui um meio para atingir um objetivo comum a outros trabalhos de investigação nesta área; pretende-se que os tratamentos de neuro reabilitação possam vir a ser personalizados para cada paciente, para que a sua recuperação seja otimizada. A ideia é que, conhecendo alguns dos dados pessoais de um doente, considerando informação sobre o seu estado inicial e através dos resultados de testes realizados, seja possível associá-lo a um determinado perfil disfuncional, de características bastante específicas, para o terapeuta poder adaptar o seu tratamento. O Institut Guttmann, em Barcelona, foi o primeiro hospital espanhol a prestar cuidados a doentes de lesões medulares. Hoje em dia, um dos seus muitos projetos chama-se GNPT Guttmann NeuroPersonalTrainer e leva a casa dos seus doentes uma plataforma que lhes permite realizar as tarefas definidas pelos terapeutas, no âmbito dos seus tratamentos de neuro reabilitação. Dados desses doentes, incluindo informação démica e resultados de testes realizados antes e depois dos tratamentos, foram cedidos pelo Institut Guttmann ao Grupo de Biomédica e Telemedicina (GBT) sob a forma de bases de dados. Através da sua análise e utilizando ferramentas de Data Mining foi possível obter perfis gerais de disfunção cognitiva e descrever a evolução desses perfis, o principal objetivo desta dissertação. Encontrar padrões em grandes volumes de dados é a principal função de um processo de Data Mining, tratando o assunto de forma muito genérica. Na verdade, é este o conceito utilizado quando são abordados temas de extração de conhecimento a partir de grandes quantidades de dados. Há diversas técnicas que o permitem fazer, que utilizam algoritmos baseados em funções estatísticas e redes neuronais e que têm vindo a ser melhoradas ao longo dos últimos anos, desde que surgiu a primeira necessidade de lidar com grandes conjuntos de elementos. O propósito é sempre o mesmo: que a análise feita a partir destas técnicas permita converter a informação oculta dos dados em informação que pode ser depois utilizada para caracterizar populações, tomar decisões ou para validar resultados. Neste caso, foram utilizados algoritmos de Clustering, um método de Data Mining que permite obter grupos de elementos semelhantes entre si, os clusters, considerando as características de cada um destes elementos. Dados de 698 doentes que sofreram um traumatismo craniano e cuja informação disponível nas bases de dados fornecidas pelo Institut Guttmann satisfazia todas as condições necessárias para serem considerados no estudo, foram integrados num Data Warehouse - um depósito de armazenamento de dados - e depois estruturados. A partir de funções criadas em SQL - a principal linguagem de consultas e organização de bases de dados relacionais - foram obtidas as pontuações correspondentes aos testes realizados pelos doentes, antes do início do tratamento e depois de este ser terminado. Estes testes visaram avaliar, utilizando cinco diferentes níveis de pontuação correspondentes a cada grau de afetação (0 para sem afetação, 1 para afetação suave, 2 para afetação moderada, 3 para afetação severa e 4 para afetação aguda), três funções estritamente relacionadas com o nível cognitivo, a atenção, a memória e algumas funções executivas. As pontuações obtidas para cada uma das funções constituem uma média ponderada da pontuação cada uma das subfunções (atenção dividida, atenção seletiva, memória de trabalho, entre outras), calculadas por pelo menos um dos 24 itens de avaliação a que cada pessoa foi sujeita. De seguida, foram determinados os grupos iniciais e finais, recorrendo a uma ferramenta muito útil para encontrar correlações em grandes conjuntos de dados, o software SPSS. Para determinar a constituição dos clusters iniciais foi aplicado um algoritmo de Clustering designado K-means e, para os finais, um outro denominado TwoStep. A principal característica desta técnica descritiva de Data Mining é a utilização da distância como medida de verificação da proximidade entre dois elementos de um cluster. Os seus algoritmos diferem no tipo de dados a que se aplicam e também na forma como calculam os agrupamentos de elementos. Para cada um dos clusters, e de acordo com cada uma das funções, foi observada a distribuição das pontuações, através de gráficos de barras. Foram também confrontados ambos os conjuntos de clusters para se poder interpretar a relação entre eles. Os clusters, que neste contexto correspondem a perfis de afetação cognitiva, foram validados, e concluiu-se que permitem descrever bem a população em estudo. Por um lado, os seis clusters iniciais determinados representam de uma forma fiel, e com muito sentido do ponto de vista clínico, os conjuntos de pessoas com características suficientemente definidas que os distinguem entre si. Já os três clusters finais, usados para retratar a população no final do tratamento e analisar as evoluções dos pacientes, retratam perfis bastante opostos, o que permitiu, de certa forma interpretar com maior facilidade para que pacientes o efeito da neuro-reabilitação foi mais ou menos positivo. Alguns estudos citados no estado de arte revelaram que algumas variáveis são suscetíveis de influenciar o estado final de um doente. Aproveitando a existência de dados suficientes para tal, foi observado se, tendo em conta os clusters finais, se poderia fazer alguma inferência sobre o efeito de algumas das variáveis – incluindo a idade, o nível de estudos, o intervalo de tempo entre a lesão e o início do tratamento e a sua duração – em cada um destes. No final, considerando apenas as pontuações dos testes em cada função, antes e depois dos tratamentos, foram analisados e interpretados, recorrendo a gráficos, os desenvolvimentos e a evolução global de cada doente. Como desenvolvimentos possíveis, foram tidos em conta os casos em que houve melhorias, agravamentos e também os casos em que os doentes mantiveram o seu estado. Fazendo uso da informação sobre a forma como evoluíram os pacientes, foi possível verificar se, de facto, utilizando apenas os valores das pontuações obtidas nos testes, se poderia ou não confirmar que outras variáveis poderiam ter efeitos na determinação do estado final de um paciente. Os gráficos obtidos demonstraram que há diferenças muito subtis considerando algumas das variáveis, principalmente entre os dos doentes que melhoraram e os dos doentes que viram a sua condição agravada. Concluiu-se que o facto de os clusters agruparem pessoas com tipos de evolução diferentes levou a que o efeito de outras variáveis se mostrasse muito disperso. O tipo de investigação sugerido para futuros desenvolvimentos inclui: (i) o estudo das outras hipóteses de perfis apresentados pelo software usado (SPSS); (ii) considerar os diferentes aspetos das funções avaliadas a um nível mais detalhado; (iii) ter em conta outras variáveis com possíveis efeitos no estado final de um doente.Although they are not the leading cause of death in the world, brain injuries are perhaps the main reason why there are so many cases of people who see their daily lives affected. This is due to the major cognitive difficulties that appear after brain lesion. Brain injuries include those that are derived from traumas due to external forces – the traumatic brain injuries. This study is focused in people who, after these injuries, were subjected to a neuro rehabilitation treatment. The treatment, based on tasks specially designed to stimulate the reorganization of neural connections, allows patients to regain their abilities to perform their everyday tasks with the least possible difficulty. These tasks aim to stimulate the brain plasticity capacity, responsible for the development of synaptic connections which allows the brain to re-establish its normal functioning after an injury. The study documented in this internship report constitutes another step for a major goal, common to other studies in this area: that neuro rehabilitation treatments can be personalized for each patient, so that their recovery is optimized. Knowing some of the personal data of a patient, considering information about their initial state and through the results of tests performed, it is possible to assign a person to a certain dysfunctional profile, with specific characteristics and for the therapist to adapt treatment. One of his many projects of the Institut Guttmann (IG) is called GNPT Guttmann NeuroPersonalTrainer and brings into its patients’ home a platform that allows them to perform the tasks set by the therapists in the context of their neurorehabilitation treatments. Data from these patients, including clinical information and test results performed before and after the treatment, were provided by the IG to the Biomedical and Telemedicine Group (GBT) as databases. Through its analysis and using Data Mining techniques it was possible to obtain general profiles of cognitive dysfunction and to characterize the evolution of these profiles, the objective of this work. Finding patterns and extracting knowledge from large volumes of data are the main functions of a Data Mining process. An analysis performed using these techniques enables the conversion of information hidden in data into information that can later be used to make decisions or to validate results. In this case, Clustering algorithms, which build groups of elements with the similar characteristics called clusters, were used. Also, data from 698 patients who suffered brain trauma and whose information available in the databases provided by the IG satisfied all the conditions considered necessary were integrated into a Data Warehouse and then structured. The scores corresponding to the tests performed before and after the treatment were calculated, for each patient. These tests aimed to evaluate, using five different punctuation levels corresponding to each degree of affectation, three functions strictly related to cognitive level: attention, memory and some executive functions (cognitive processes necessary for the cognitive control of behavior). The initial and final clusters, representing patients’ profiles, were determined, using the SPSS software. The distribution of the scores over the clusters was observed through bar graphs. Both groups of clusters were also confronted to interpret the relationship between them. The clusters, which in this context correspond to profiles of cognitive affectation, were validated, and it was concluded that, at this moment, they represent well the state of patients under study. As some variables, like age and study level, are likely to influence the final state of a patient, it was observed if, given the final clusters, some inference could be made about the effect of those variables. No valuable conclusions were taken from this part. Also, considering the tests scores, patients’ evolution was identified as improvements, aggravations and cases where the conditions is maintained. Using that information, conclusions were extracted, regarding the population and the variables effect. The plots obtained allowed us to correctly describe the patients’ evolution and also to see if the variables considered were good descriptors of that evolution. A simple interpretation from of the facts allows to conclude that the calculated are good general, but not perfect descriptors of the population. The type of research suggested for future developments includes: (i) the study of the other hypothesis of profiles presented by the Data Mining software; (ii) consider the different aspects of the functions evaluated at a more detailed level; (iii) take into account other variables with possible effects on describing the final state of a patient

    Supporting the design of sequences of cumulative activities impacting on multiple areas through a data mining approach : application to design of cognitive rehabilitation programs for traumatic brain injury patients

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    Traumatic brain injury (TBI) is a leading cause of disability worldwide. It is the most common cause of death and disability during the first three decades of life and accounts for more productive years of life lost than cancer, cardiovascular disease and HIV/AIDS combined. Cognitive Rehabilitation (CR), as part of Neurorehabilitation, aims to reduce the cognitive deficits caused by TBI. CR treatment consists of sequentially organized tasks that require repetitive use of impaired cognitive functions. While task repetition is not the only important feature, it is becoming clear that neuroplastic change and functional improvement only occur after a number of specific tasks are performed in a certain order and repetitions and does not occur otherwise. Until now, there has been an important lack of well-established criteria and on-field experience by which to identify the right number and order of tasks to propose to each individual patient. This thesis proposes the CMIS methodology to support health professionals to compose CR programs by selecting the most promising tasks in the right order. Two contributions to this topic were developed for specific steps of CMIS through innovative data mining techniques SAIMAP and NRRMR methodologies. SAIMAP (Sequence of Activities Improving Multi-Area Performance) proposes an innovative combination of data mining techniques in a hybrid generic methodological framework to find sequential patterns of a predefined set of activities and to associate them with multi-criteria improvement indicators regarding a predefined set of areas targeted by the activities. It combines data and prior knowledge with preprocessing, clustering, motif discovery and classes` post-processing to understand the effects of a sequence of activities on targeted areas, provided that these activities have high interactions and cumulative effects. Furthermore, this work introduces and defines the Neurorehabilitation Range (NRR) concept to determine the degree of performance expected for a CR task and the number of repetitions required to produce maximum rehabilitation effects on the individual. An operationalization of NRR is proposed by means of a visualization tool called SAP. SAP (Sectorized and Annotated Plane) is introduced to identify areas where there is a high probability of a target event occurring. Three approaches to SAP are defined, implemented, applied, and validated to a real case: Vis-SAP, DT-SAP and FT-SAP. Finally, the NRRMR (Neurorehabilitation Range Maximal Regions) problem is introduced as a generalization of the Maximal Empty Rectangle problem (MER) to identify maximal NRR over a FT-SAP. These contributions combined together in the CMIS methodology permit to identify a convenient pattern for a CR program (by means of a regular expression) and to instantiate by a real sequence of tasks in NRR by maximizing expected improvement of patients, thus provide support for the creation of CR plans. First of all, SAIMAP provides the general structure of successful CR sequences providing the length of the sequence and the kind of task recommended at every position (attention tasks, memory task or executive function task). Next, NRRMR provides specific tasks information to help decide which particular task is placed at each position in the sequence, the number of repetitions, and the expected range of results to maximize improvement after treatment. From the Artificial Intelligence point of view the proposed methodologies are general enough to be applied in similar problems where a sequence of interconnected activities with cumulative effects are used to impact on a set of areas of interest, for example spinal cord injury patients following physical rehabilitation program or elderly patients facing cognitive decline due to aging by cognitive stimulation programs or on educational settings to find the best way to combine mathematical drills in a program for a specific Mathematics course.El traumatismo craneoencefálico (TCE) es una de las principales causas de morbilidad y discapacidad a nivel mundial. Es la causa más común de muerte y discapacidad en personas menores de 30 años y es responsable de la pérdida de más años de vida productiva que el cáncer, las enfermedades cardiovasculares y el SIDA sumados. La Rehabilitación Cognitiva (RC) como parte de la Neurorehabilitación, tiene como objetivo reducir el impacto de las condiciones de discapacidad y disminuir los déficits cognitivos causados (por ejemplo) por un TCE. Un tratamiento de RC está formado por un conjunto de tareas organizadas de forma secuencial que requieren un uso repetitivo de las funciones cognitivas afectadas. Mientras que el número de ejecuciones de una tarea no es la única característica importante, es cada vez más evidente que las transformaciones neuroplásticas ocurren cuando se ejecutan un número específico de tareas en un cierto orden y no ocurren en caso contrario. Esta tesis propone la metodología CMIS para dar soporte a los profesionales de la salud en la composición de programas de RC, seleccionando las tareas más prometedoras en el orden correcto. Se han desarrollado dos contribuciones para CMIS mediante las metodologías SAMDMA y RNRRM basadas en técnicas innovadoras de minería de datos. SAMDMA (Secuencias de Actividades que Mejoran el Desempeño en Múltiples Áreas) propone una combinación de técnicas de minería de datos y un marco de trabajo genérico híbrido para encontrar patrones secuenciales en un conjunto de actividades y asociarlos con indicadores de mejora multi-criterio en relación a un conjunto de áreas hacia las cuales las actividades están dirigidas. Combina el uso de datos y conocimiento experto con técnicas de pre-procesamiento, clustering, descubrimiento de motifs y post procesamiento de clases. Además, se introduce y define el concepto de Rango de NeuroRehabilitación (RNR) para determinar el grado de performance esperado para una tarea de RC y el número de repeticiones que debe ejecutarse para producir mayores efectos rehabilitadores. Se propone una operacionalización del RNR por medio de una herramienta de visualización llamada Plano Sectorizado Anotado (PAS). PAS permite identificar áreas en las que hay una alta probabilidad de que ocurra un evento. Tres enfoques diferentes al PAS se definen, implementan, aplican y validan en un caso real : Vis-PAS, DT-PAS y FT-PAS. Finalmente, el problema RNRRM (Rango de NeuroRehabilitación de Regiones Máximas) se presenta como una generalización del problema del Máximo Rectángulo Vacío para identificar RNR máximos sobre un FT-PAS. La combinación de estas dos contribuciones en la metodología CMIS permite identificar un patrón conveniente para un programa de RC (por medio de una expresión regular) e instanciarlo en una secuencia real de tareas en RNR maximizando las mejoras esperadas de los pacientes, proporcionando soporte a la creación de planes de RC. Inicialmente, SAMDMA proporciona la estructura general de secuencias de RC exitosas para cada paciente, proporcionando el largo de la secuencia y el tipo de tarea recomendada en cada posición. RNRRM proporciona información específica de tareas para ayudar a decidir cuál se debe ejecutar en cada posición de la secuencia, el número de veces que debe ser repetida y el rango esperado de resultados para maximizar la mejora. Desde el punto de vista de la Inteligencia Artificial, ambas metodologías propuestas, son suficientemente generales como para ser aplicadas a otros problemas de estructura análoga en que una secuencia de actividades interconectadas con efectos acumulativos se utilizan para impactar en un conjunto de áreas de interés. Por ejemplo pacientes lesionados medulares en tratamiento de rehabilitación física, personas mayores con deterioro cognitivo debido al envejecimiento y utilizan programas de estimulación cognitiva, o entornos educacionales para combinar ejercicios de cálculo en un programa específico de Matemáticas

    Machine learning for the prediction of psychosocial outcomes in acquired brain injury

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    Acquired brain injury (ABI) can be a life changing condition, affecting housing, independence, and employment. Machine learning (ML) is increasingly used as a method to predict ABI outcomes, however improper model evaluation poses a potential bias to initially promising findings (Chapter One). This study aimed to evaluate, with transparent reporting, three common ML classification methods. Regularised logistic regression with elastic net, random forest and linear kernel support vector machine were compared with unregularised logistic regression to predict good psychosocial outcomes after discharge from ABI inpatient neurorehabilitation using routine cognitive, psychometric and clinical admission assessments. Outcomes were selected on the basis of decision making for care packages: accommodation status, functional participation, supervision needs, occupation and quality of life. The primary outcome was accommodation (n = 164), with models internally validated using repeated nested cross-validation. Random forest was statistically superior to logistic regression for every outcome with areas under the receiver operating characteristic curve (AUC) ranging from 0.81 (95% confidence interval 0.77-0.85) for the primary outcome of accommodation, to its lowest performance for predicting occupation status with an AUC of 0.72 (0.69-0.76). The worst performing ML algorithm was support vector machine, only having statistically superior performance to logistic regression for one outcome, supervision needs, with an AUC of 0.75 (0.71-0.80). Unregularised logistic regression models were poorly calibrated compared to ML indicating severe overfitting, unlikely to perform well in new samples. Overall, ML can predict psychosocial outcomes using routine psychosocial admission data better than other statistical methods typically used by psychologists

    Care and Neurorehabilitation in the Disorder of Consciousness: A Model in Progress

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    The operational model and strategies developed at the Institute S. Anna-RAN to be applied in the care and neurorehabilitation of subjects with disorders of consciousness (DOC) are described. The institute units are sequentially organized to guarantee appropriate care and provide rehabilitation programs adapted to the patients’ clinical condition and individual’s needs at each phase of evolution during treatment in a fast turnover rate. Patients eligible of home care are monitored remotely. Transferring advanced technology to a stage of regular operation is the main mission. Responsiveness and the time windows characterized by better residual responsiveness are identified and the spontaneous/induced changes in the autonomic system functional state and biological parameters are monitored both in dedicated sessions and by means of an ambient intelligence platform acquiring large databases from traditional and innovative sensors and interfaced with knowledge management and knowledge discovery systems. Diagnosis of vegetative state/unresponsive wakefulness syndrome or minimal conscious state and early prognosis are in accordance with the current criteria. Over one thousand patients with DOC have been admitted and treated in the years 1998–2013. The model application has progressively shortened the time of hospitalization and reduced costs at unchanged quality of services

    Neurophysiological and Behavioral Responses to Music Therapy in Vegetative and Minimally Conscious States

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    Assessment of awareness for those with disorders of consciousness is a challenging undertaking, due to the complex presentation of the population. Debate surrounds whether behavioral assessments provide greatest accuracy in diagnosis compared to neuro-imaging methods, and despite developments in both, misdiagnosis rates remain high. Music therapy may be effective in the assessment and rehabilitation with this population due to effects of musical stimuli on arousal, attention, and emotion, irrespective of verbal or motor deficits. However, an evidence base is lacking as to which procedures are most effective. To address this, a neurophysiological and behavioral study was undertaken comparing electroencephalogram (EEG), heart rate variability, respiration, and behavioral responses of 20 healthy subjects with 21 individuals in vegetative or minimally conscious states (VS or MCS). Subjects were presented with live preferred music and improvised music entrained to respiration (procedures typically used in music therapy), recordings of disliked music, white noise, and silence. ANOVA tests indicated a range of significant responses (p ? 0.05) across healthy subjects corresponding to arousal and attention in response to preferred music including concurrent increases in respiration rate with globally enhanced EEG power spectra responses (p = 0.05–0.0001) across frequency bandwidths. Whilst physiological responses were heterogeneous across patient cohorts, significant post hoc EEG amplitude increases for stimuli associated with preferred music were found for frontal midline theta in six VS and four MCS subjects, and frontal alpha in three VS and four MCS subjects (p = 0.05–0.0001). Furthermore, behavioral data showed a significantly increased blink rate for preferred music (p = 0.029) within the VS cohort. Two VS cases are presented with concurrent changes (p ? 0.05) across measures indicative of discriminatory responses to both music therapy procedures. A third MCS case study is presented highlighting how more sensitive selective attention may distinguish MCS from VS. The findings suggest that further investigation is warranted to explore the use of music therapy for prognostic indicators, and its potential to support neuroplasticity in rehabilitation programs

    Monitoring and Prognosis System Based on the ICF for People with Traumatic Brain Injury

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    The objective of this research is to provide a standardized platform to monitor and predict indicators of people with traumatic brain injury using the International Classification of Functioning, Disability and Health, and analyze its potential benefits for people with disabilities, health centers and administrations. We developed a platform that allows automatic standardization and automatic graphical representations of indicators of the status of individuals and populations. We used data from 730 people with acquired brain injury performing periodic comprehensive evaluations in the years 2006-2013. Health professionals noted that the use of color-coded graphical representation is useful for quickly diagnose failures, limitations or restrictions in rehabilitation. The prognosis System achieves 41% of accuracy and sensitivity in the prediction of emotional functions, and 48% of accuracy and sensitivity in the prediction of executive functions. This monitoring and prognosis system has the potential to: (1) save costs and time, (2) provide more information to make decisions, (3) promote interoperability, (4) facilitate joint decision-making, and (5) improve policies of socioeconomic evaluation of the burden of disease. Professionals found the monitoring system useful because it generates a more comprehensive understanding of health oriented to the profile of the patients, instead of their diseases and injuries

    Do informal caregivers of people with dementia mirror the cognitive deficits of their demented patients?:A pilot study

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    Recent research suggests that informal caregivers of people with dementia (ICs) experience more cognitive deficits than noncaregivers. The reason for this is not yet clear. Objective: to test the hypothesis that ICs ‘mirror' the cognitive deficits of the demented people they care for. Participants and methods: 105 adult ICs were asked to complete three neuropsychological tests: letter fluency, category fluency, and the logical memory test from the WMS-III. The ICs were grouped according to the diagnosis of their demented patients. One-sample ttests were conducted to investigate if the standardized mean scores (t-scores) of the ICs were different from normative data. A Bonferroni correction was used to correct for multiple comparisons. Results: 82 ICs cared for people with Alzheimer's dementia and 23 ICs cared for people with vascular dementia. Mean letter fluency score of the ICs of people with Alzheimer's dementia was significantly lower than the normative mean letter fluency score, p = .002. The other tests yielded no significant results. Conclusion: our data shows that ICs of Alzheimer patients have cognitive deficits on the letter fluency test. This test primarily measures executive functioning and it has been found to be sensitive to mild cognitive impairment in recent research. Our data tentatively suggests that ICs who care for Alzheimer patients also show signs of cognitive impairment but that it is too early to tell if this is cause for concern or not
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