Apatite trace element composition as an indicator of ore deposit types: A machine learning approach

Author:

Qiu Kun-Feng1ORCID,Zhou Tong1,Chew David2,Hou Zhao-Liang3,Müller Axel45,Yu Hao-Cheng1,Lee Robert G.6,Chen Huan7,Deng Jun18

Affiliation:

1. Frontiers Science Center for Deep-time Digital Earth, State Key Laboratory of Geological Processes and Mineral Resources, School of Earth Sciences and Resources, China University of Geosciences, Beijing 100083, China

2. Department of Geology, School of Natural Sciences, Trinity College Dublin, Dublin 2, Ireland

3. Department of Geology, University of Vienna, Vienna 1090, Austria

4. Natural History Museum, University of Oslo, Oslo 0562, Norway

5. Natural History Museum, London SW7 5BD, U.K.

6. Mineral Deposit Research Unit (MRDU), The University of British Columbia, Main Mall, Vancouver, British Columbia V6T 1Z4, Canada

7. Institute of Marine Geology, College of Oceanography, Hohai University, Nanjing, China

8. Geological Research Institute of Shandong Gold Group Co., Ltd., Jinan 250013, China

Abstract

Abstract The diverse suite of trace elements incorporated into apatite in ore-forming systems has important applications in petrogenesis studies of mineral deposits. Trace element variations in apatite can be used to distinguish between fertile and barren environments, and thus have potential as mineral exploration tools. Such classification approaches commonly employ two-variable scatterplots of apatite trace element compositional data. While such diagrams offer accessible visualization of compositional trends, they often struggle to effectively distinguish ore deposit types because they do not employ all the high-dimensional (i.e., multi-element) information accessible from high-quality apatite trace element analysis. To address this issue, we use a supervised machine-learning-based approach (eXtreme Gradient Boosting, XGBoost) to correlate apatite compositions with ore deposit type, utilizing such high-dimensional information. We evaluated 8629 apatite trace element data from five ore deposit types (porphyry, skarn, orogenic Au, iron oxide copper gold, and iron oxide-apatite) along with unmineralized magmatic and metamorphic apatite to identify discriminating parameters for the individual deposit types, as well as for mineralized systems. According to feature selection, eight elements (Th, U, Sr, Eu, Dy, Y, Nd, and La) improve the model performance. We show that the XGBoost classifier efficiently and accurately classifies high-dimensional apatite trace element data according to the ore deposit type (overall accuracy: 94% and F1 score: 89%). Interpretation of the model using the SHAPley Additive exPlanations (SHAP) tool shows that Th, U, Eu, and Nd are the most indicative elements for classifying deposit types using apatite trace element chemistry. Our approach has broad implications for the better understanding of the sources, chemistry, and evolution of melts and hydrothermal fluids resulting in ore deposit formation.

Publisher

Mineralogical Society of America

Subject

Geochemistry and Petrology,Geophysics

Reference88 articles.

1. Abou Omar, K.B. (2018) XGBoost and LGBM for Porto Seguro’s Kaggle challenge: A comparison. ETH Preprint Semester Project, https://pub.tik.ee.ethz.ch/students/2017-HS/SA-2017-98.pdf.

2. Effects of distance measure choice on K-nearest neighbor classifier performance: A review;Abu Alfeilat;Big Data,2019

3. Mechanisms of crustal anatexis: A geochemical study of partially melted metapelitic enclaves and host dacite, SE Spain;Acosta-Vigil;Journal of Petrology,2010

4. The origin of mineralizing hydrothermal fluids recorded in apatite chemistry at the Cantung W-Cu skarn deposit, NWT, Canada;Adlakha;European Journal of Mineralogy,2018

5. Apatite as a tracer of the source, chemistry and evolution of ore-forming fluids: The case of the Olserum-Djupedal REE-phosphate mineralisation, SE Sweden;Andersson;Geochimica et Cosmochimica Acta,2019

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