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Machine learning algorithms to predict treatment success for patients with pulmonary tuberculosis

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  • Shaik Ahamed Fayaz
  • Lakshmanan Babu
  • Loganathan Paridayal
  • Mahalingam Vasantha
  • Palaniyandi Paramasivam
  • Karuppasamy Sundarakumar
  • Chinnaiyan Ponnuraja

Abstract

Despite advancements in detection and treatment, tuberculosis (TB), an infectious illness caused by the Mycobacterium TB bacteria, continues to pose a serious threat to world health. The TB diagnosis phase includes a patient’s medical history, physical examination, chest X-rays, and laboratory procedures, such as molecular testing and sputum culture. In artificial intelligence (AI), machine learning (ML) is an advanced study of statistical algorithms that can learn from historical data and generalize the results to unseen data. There are not many studies done on the ML algorithm that enables the prediction of treatment success for patients with pulmonary TB (PTB). The objective of this study is to identify an effective and predictive ML algorithm to evaluate the detection of treatment success in PTB patients and to compare the predictive performance of the ML models. In this retrospective study, a total of 1236 PTB patients who were given treatment under a randomized controlled clinical trial at the ICMR-National Institute for Research in Tuberculosis, Chennai, India were considered for data analysis. The multiple ML models were developed and tested to identify the best algorithm to predict the sputum culture conversion of TB patients during the treatment period. In this study, decision tree (DT), random forest (RF), support vector machine (SVM) and naïve bayes (NB) models were validated with high performance by achieving an area under the curve (AUC) of receiver operating characteristic (ROC) greater than 80%. The salient finding of the study is that the DT model was produced as a better algorithm with the highest accuracy (92.72%), an AUC (0.909), precision (95.90%), recall (95.60%) and F1-score (95.75%) among the ML models. This methodology may be used to study the precise ML model classification for predicting the treatment success of TB patients during the treatment period.

Suggested Citation

  • Shaik Ahamed Fayaz & Lakshmanan Babu & Loganathan Paridayal & Mahalingam Vasantha & Palaniyandi Paramasivam & Karuppasamy Sundarakumar & Chinnaiyan Ponnuraja, 2024. "Machine learning algorithms to predict treatment success for patients with pulmonary tuberculosis," PLOS ONE, Public Library of Science, vol. 19(10), pages 1-11, October.
  • Handle: RePEc:plo:pone00:0309151
    DOI: 10.1371/journal.pone.0309151
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    References listed on IDEAS

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    1. Haron W Gichuhi & Mark Magumba & Manish Kumar & Roy William Mayega, 2023. "A machine learning approach to explore individual risk factors for tuberculosis treatment non-adherence in Mukono district," PLOS Global Public Health, Public Library of Science, vol. 3(7), pages 1-20, July.
    2. Anila Basit & Nafees Ahmad & Amer Hayat Khan & Arshad Javaid & Syed Azhar Syed Sulaiman & Afsar Khan Afridi & Azreen Syazril Adnan & Israr ul Haq & Syed Saleem Shah & Ahmed Ahadi & Izaz Ahmad, 2014. "Predictors of Two Months Culture Conversion in Multidrug-Resistant Tuberculosis: Findings from a Retrospective Cohort Study," PLOS ONE, Public Library of Science, vol. 9(4), pages 1-6, April.
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