600 Technik, Medizin, angewandte Wissenschaften
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Auf dem Markt der Android Applikationen gibt es ein breites Spektrum an
Lernanwendungen. Allerdings exisitiert ein Mangel an gut strukturierten
inhaltlichen Zusammenfassungen der schulischen Themen, gerade im
Fach Mathematik.
Mein Ziel der Bachelorarbeit ist, eine Education App zu entwickeln, diese
im realen Betrieb zu testen und somit einen Lösungsansatz für den
Mangel an solchen Apps zu erhalten. Ich werde am Beispiel der 8. Klasse
Realschule im Fach Mathematik eine thematische Zusammenfassung
erzeugen und als App umsetzen. Mathematische Grundlage hierfür bildet
das Schulbuch Schnittpunkt 8 des Klettverlages (Differenzierende
Ausgabe, 2015).
Bugfixing und Evaluierung verläuft Hand in Hand, um am Ende des
Entwicklungsprozesses eine voll funktionsfähige, getestete App zu
bekommen.
Mit Hilfe eines Fragebogens wird dabei direkt auf die Zielgruppe
eingegangen.
Die App wird im Anschluss des Entwicklungsprozesses nach dem Open-
Closed Prinzip fungieren. Ist also für Erweiterungen offen. Diese Funktion
erreiche ich durch genau definierte Schnittstellen. Es wird möglich sein,
neue Klassen ebenso wie Schularten hinzuzufügen. Als
Entwicklungsumgebung dient mir IntelliJ, als Testgerät ein Samsung
Smartphone.
Die App wird den Namen MaTHive Spectre tragen, um direkt auf das
Potential aufmerksam zu machen und einen einprägsamen Namen zu
erhalten.
Implementation of an interactive pattern mining framework on electronic health record datasets
(2019)
Large collections of electronic patient records contain a broad range of clinical information highly relevant for data analysis. However, they are maintained primarily for patient administration, and automated methods are required to extract valuable knowledge for predictive, preventive, personalized and participatory medicine. Sequential pattern mining is a fundamental task in data mining which can be used to find statistically relevant, non-trivial temporal dependencies of events such as disease comorbidities. This works objective is to use this mining technique to identify disease associations based on ICD-9-CM codes data of the entire Taiwanese population obtained from Taiwan’s National Health Insurance Research Database.
This thesis reports the development and implementation of the Disease Pattern Miner – a pattern mining framework in a medical domain. The framework was designed as a Web application which can be used to run several state-of-the-art sequence mining algorithms on electronic health records, collect and filter the results to reduce the number of patterns to a meaningful size, and visualize the disease associations as an interactive model in a specific population group. This may be crucial to discover new disease associations and offer novel insights to explain disease pathogenesis. A structured evaluation of the data and models are required before medical data-scientist may use this application as a tool for further research to get a better understanding of disease comorbidities.
In this bachelor thesis, different models for predicting the influenza virus are
examined in more detail.
The focus is on epidemiological compartmental models, as well as on different
Machine Learning approaches.
In particular, the basics chapter presents the SIR model and its various extensions.
Furthermore, Deep Learning and Social Network approaches are
investigated and the applied methods of a selected article are analysed in more
detail.
The practical part of this work consists in the implementation of a Multiple
Linear Regression model and an Artificial Neural Network. For the development
of both models the programming language Python was chosen using the
Deep Learning Framework Keras.
Tests were performed with real data from the Réseau Sentinelles, a French
organisation for monitoring national health.
The results of the tests show that the Neural Network is able to make better
predictions than the Multiple Linear Regression model.
The discussion shows ideas for improving influenza prediction including the
establishment of a worldwide collaboration between the surveillance centres as
well as the consolidation of historical data with real-time social media data.
Therefore, this work consists of a state-of-the art of models regarding the
spread of influenza virus, the development and comparison of several models
programmed in Python, evaluated on real data.