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1.
PLoS One ; 14(10): e0222637, 2019.
Article in English | MEDLINE | ID: mdl-31600214

ABSTRACT

BACKGROUND: Rare diseases (RD) result in a wide variety of clinical presentations, and this creates a significant diagnostic challenge for health care professionals. We hypothesized that there exist a set of consistent and shared phenomena among all individuals affected by (different) RD during the time before diagnosis is established. OBJECTIVE: We aimed to identify commonalities between different RD and developed a machine learning diagnostic support tool for RD. METHODS: 20 interviews with affected individuals with different RD, focusing on the time period before their diagnosis, were performed and qualitatively analyzed. Out of these pre-diagnostic experiences, we distilled key phenomena and created a questionnaire which was then distributed among individuals with the established diagnosis of i.) RD, ii.) other common non-rare diseases (NRO) iii.) common chronic diseases (CD), iv.), or psychosomatic/somatoform disorders (PSY). Finally, four combined single machine learning methods and a fusion algorithm were used to distinguish the different answer patterns of the questionnaires. RESULTS: The questionnaire contained 53 questions. A total sum of 1763 questionnaires (758 RD, 149 CD, 48 PSY, 200 NRO, 34 healthy individuals and 574 not evaluable questionnaires) were collected. Based on 3 independent data sets the 10-fold stratified cross-validation method for the answer-pattern recognition resulted in sensitivity values of 88.9% to detect the answer pattern of a RD, 86.6% for NRO, 87.7% for CD and 84.2% for PSY. CONCLUSION: Despite the great diversity in presentation and pathogenesis of each RD, patients with RD share surprisingly similar pre-diagnosis experiences. Our questionnaire and data-mining based approach successfully detected unique patterns in groups of individuals affected by a broad range of different rare diseases. Therefore, these results indicate distinct patterns that may be used for diagnostic support in RD.


Subject(s)
Chronic Disease/epidemiology , Machine Learning , Rare Diseases/diagnosis , Rare Diseases/epidemiology , Adolescent , Adult , Artificial Intelligence , Data Mining , Female , Health Personnel/statistics & numerical data , Health Status , Humans , Male , Patients , Rare Diseases/classification , Surveys and Questionnaires , Young Adult
2.
Klin Padiatr ; 231(2): 60-66, 2019 Mar.
Article in German | MEDLINE | ID: mdl-30630212

ABSTRACT

BACKGROUND: Diagnosing a rare metabolic disease challenges physicians and affected individuals and their families. To support the diagnostic pathway, a diagnostic tool was developed using the experiences of the affected individuals gained in interviews. METHODS: 17 interviews with parents or individuals with a selected rare metabolic disease (Mucopolysaccharidosis (MPS), M. Fabry and M. Gaucher) were performed and qualitatively analysed using the standardized methods of Colaizzi. The results are reflected in diagnostic questionnaires. The questionnaires were distributed and answered by parents or individuals with an established diagnosis of MPS, M. Fabry or M. Gaucher and a control group. Four combined data mining classifiers were trained to detect suspicious answer patterns in the questionnaires. RESULTS: 56 questionnaires were used for training and cross-validation tests of the binary data mining system resulting in a sensitivity value of 91% for the diagnosis 'MPS'. Another 20 questionnaires which have not been used for the training process could be evaluated as a preliminary prospective test. Out of these 20 questionnaires the test delivered 18 correct diagnoses (90%). DISCUSSION AND CONCLUSIONS: Questionnaires for diagnostic support based on interviews with parents and affected individuals were developed and answer patterns were analysed with an ensemble of classifiers. Although preliminary, the results illustrate the potential of answer pattern recognition using data mining techniques. This approach might prove useful for diagnostic support in selected metabolic diseases.


Subject(s)
Fabry Disease/diagnosis , Gaucher Disease/diagnosis , Mucopolysaccharidoses/diagnosis , Rare Diseases/diagnosis , Surveys and Questionnaires , Data Interpretation, Statistical , Data Mining , Humans , Parents , Prospective Studies , Self Concept
3.
PLoS One ; 12(2): e0172532, 2017.
Article in English | MEDLINE | ID: mdl-28234950

ABSTRACT

BACKGROUND: Worldwide approximately 7,000 rare diseases have been identified. Accordingly, 4 million individuals live with a rare disease in Germany. The mean time to diagnosis is about 6 years and patients receive several incorrect diagnoses during this time. A multiplicity of factors renders diagnosing a rare disease extremely difficult. Detection of shared phenomena among individuals with different rare diseases could assist the diagnostic process. In order to explore the demand for diagnostic support and to obtain the commonalities among patients, a nationwide Delphi survey of centers for rare diseases and patient groups was conducted. METHODS: A two-step Delphi survey was conducted using web-based technologies in all centers for rare diseases in Germany. Moreover, the leading patient support group, the German foundation for rare diseases (ACHSE), was contacted to involve patients as experts in their disease. In the survey the experts were invited to name rare diseases with special need for diagnostic improvement. Secondly, communal experiences of affected individuals were collected. RESULTS: 166 of 474 contacted experts (35%) participated in the first round of the Delphi process and 95 of 166 (57%) participated in the second round. Metabolic (n = 74) and autoimmune diseases (n = 39) were ranked the highest for need for diagnostic support. For three diseases (i.e. scleroderma, Pompe's disease, and pulmonary arterial hypertension), a crucial need for diagnostic support was explicitly stated. A typical experience of individuals with a rare disease was stigmatization of having psychological or psychosomatic problems. In addition, most experts endured an 'odyssey' of seeing many different medical specialists before a correct diagnosis (n = 38) was confirmed. CONCLUSION: There is need for improving the diagnostic process in individuals with rare diseases. Shared experiences in individuals with a rare disease were observed, which could possibly be utilized for diagnostic support in the future.


Subject(s)
Delayed Diagnosis , Rare Diseases/diagnosis , Self-Help Groups/organization & administration , Social Support , Adult , Autoimmune Diseases/diagnosis , Delphi Technique , Female , Germany , Glycogen Storage Disease Type II/diagnosis , Humans , Hypertension/classification , Hypertension/diagnosis , Male , Metabolic Diseases/diagnosis , Middle Aged , Scleroderma, Systemic/diagnosis
4.
BMC Med Inform Decis Mak ; 16: 31, 2016 Mar 08.
Article in English | MEDLINE | ID: mdl-26957320

ABSTRACT

BACKGROUND: Diagnosis of neuromuscular diseases in primary care is often challenging. Rare diseases such as Pompe disease are easily overlooked by the general practitioner. We therefore aimed to develop a diagnostic support tool using patient-oriented questions and combined data mining algorithms recognizing answer patterns in individuals with selected neuromuscular diseases. A multicenter prospective study for the proof of concept was conducted thereafter. METHODS: First, 16 interviews with patients were conducted focusing on their pre-diagnostic observations and experiences. From these interviews, we developed a questionnaire with 46 items. Then, patients with diagnosed neuromuscular diseases as well as patients without such a disease answered the questionnaire to establish a database for data mining. For proof of concept, initially only six diagnoses were chosen (myotonic dystrophy and myotonia (MdMy), Pompe disease (MP), amyotrophic lateral sclerosis (ALS), polyneuropathy (PNP), spinal muscular atrophy (SMA), other neuromuscular diseases, and no neuromuscular disease (NND). A prospective study was performed to validate the automated malleable system, which included six different classification methods combined in a fusion algorithm proposing a final diagnosis. Finally, new diagnoses were incorporated into the system. RESULTS: In total, questionnaires from 210 individuals were used to train the system. 89.5 % correct diagnoses were achieved during cross-validation. The sensitivity of the system was 93-97 % for individuals with MP, with MdMy and without neuromuscular diseases, but only 69 % in SMA and 81 % in ALS patients. In the prospective trial, 57/64 (89 %) diagnoses were predicted correctly by the computerized system. All questions, or rather all answers, increased the diagnostic accuracy of the system, with the best results reached by the fusion of different classifier methods. Receiver operating curve (ROC) and p-value analyses confirmed the results. CONCLUSION: A questionnaire-based diagnostic support tool using data mining methods exhibited good results in predicting selected neuromuscular diseases. Due to the variety of neuromuscular diseases, additional studies are required to measure beneficial effects in the clinical setting.


Subject(s)
Data Mining/methods , Decision Support Systems, Clinical , Neuromuscular Diseases/diagnosis , Pattern Recognition, Automated/methods , Humans , Pilot Projects , Prospective Studies , Surveys and Questionnaires
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