Abstract

The objective of systematic reviews is to address a research question by summarizing relevant studies following a detailed, comprehensive, and transparent plan and search protocol to reduce bias. Systematic reviews are very useful in the biomedical and healthcare domain; however, the data extraction phase of the systematic review process necessitates substantive expertise and is labour-intensive and time-consuming. The aim of this work is to partially automate the process of building systematic radiotherapy treatment literature reviews by summarizing the required data elements of geometric errors of radiotherapy from relevant literature using machine learning and natural language processing (NLP) approaches. A framework is developed in this study that initially builds a training corpus by extracting sentences containing different types of geometric errors of radiotherapy from relevant publications. The publications are retrieved from PubMed following a given set of rules defined by a domain expert. Subsequently, the method develops a training corpus by extracting relevant sentences using a sentence similarity measure. A support vector machine (SVM) classifier is then trained on this training corpus to extract the sentences from new publications which contain relevant geometric errors. To demonstrate the proposed approach, we have used 60 publications containing geometric errors in radiotherapy to automatically extract the sentences stating the mean and standard deviation of different types of errors between planned and executed radiotherapy. The experimental results show that the recall and precision of the proposed framework are, respectively, 97% and 72%. The results clearly show that the framework is able to extract almost all sentences containing required data of geometric errors.

Highlights

  • We report on the development of a framework based on machine learning and natural language processing (NLP) for extracting sentences containing required data elements of geometric discrepancies in radiation therapy from relevant literature

  • We developed a framework based on bag of words model and support vector machine (SVM) classifier that partially automates the process of building systematic radiotherapy literature reviews by extracting relevant sentences from the literature

  • A machine learning and NLP-based framework is proposed in this study to automatically build a training corpus followed by a sentence classification framework to extract required geometric errors of radiotherapy from relevant literature

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Summary

Introduction

Systematic reviews are composed by summarizing different data elements of a particular topic, collected from relevant articles following a detailed, comprehensive, and transparent plan to reduce bias [2]. Some examples of such data elements include the population of an intervention, the inclusion criteria for testing the effect of a drug, etc. The experts manually extract these data elements from the relevant literature, following a predefined protocol, and build a systematic review, a process which typically requires a substantial amount of time [1]. The data elements may occur in a variety of contexts within an article, rendering their identification extremely difficult

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