The Development of a Short Version of the SIMS Using Machine Learning to Detect Feigning in Forensic Assessment

被引:0
|
作者
Graziella Orrù
Cristina Mazza
Merylin Monaro
Stefano Ferracuti
Giuseppe Sartori
Paolo Roma
机构
[1] University of Pisa,Department of Surgical, Medical Molecular & Critical Area Pathology
[2] G. D’Annunzio University,Department of Neuroscience, Imaging and Clinical Sciences
[3] University of Padova,Department of General Psychology
[4] Sapienza University of Rome,Department of Human Neuroscience
来源
关键词
SIMS; Psychic damage; Malingering; Machine learning; Feature selection;
D O I
暂无
中图分类号
学科分类号
摘要
In the present study, we applied machine learning techniques to evaluate whether the Structured Inventory of Malingered Symptomatology (SIMS) can be reduced in length yet maintain accurate discrimination between consistent participants (i.e., presumed truth tellers) and symptom producers. We applied machine learning item selection techniques on data from Mazza et al. (2019c) to identify the minimum number of original SIMS items that could accurately distinguish between consistent participants, symptom accentuators, and symptom producers in real personal injury cases. Subjects were personal injury claimants who had undergone forensic assessment, which is known to incentivize malingering and symptom accentuation. Item selection yielded short versions of the scale with as few as 8 items (to differentiate between consistent participants and symptom producers) and as many as 10 items (to differentiate between consistent and inconsistent participants). The scales had higher classification accuracy than the original SIMS and did not show the bias that was originally reported between false positives and false negatives.
引用
收藏
页码:46 / 57
页数:11
相关论文
共 50 条
  • [31] Evaluation of an Activity Tracker to Detect Seizures Using Machine Learning
    Mittlesteadt, Jackson
    Bambach, Sven
    Dawes, Alex
    Wentzel, Evelynne
    Debs, Andrea
    Sezgin, Emre
    Digby, Dan
    Huang, Yungui
    Ganger, Andrea
    Bhatnagar, Shivani
    Ehrenberg, Lori
    Nunley, Sunjay
    Glynn, Peter
    Lin, Simon
    Rust, Steve
    Patel, Anup D.
    JOURNAL OF CHILD NEUROLOGY, 2020, 35 (13) : 873 - 878
  • [32] Using Machine Learning to Detect Ghost Images in Automotive Radar
    Kraus, Florian
    Scheiner, Nicolas
    Ritter, Werner
    Dietmayer, Klaus
    2020 IEEE 23RD INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC), 2020,
  • [33] Using machine learning to detect coronaviruses potentially infectious to humans
    Gonzalez-Isunza, Georgina
    Jawaid, M. Zaki
    Liu, Pengyu
    Cox, Daniel L.
    Vazquez, Mariel
    Arsuaga, Javier
    SCIENTIFIC REPORTS, 2023, 13 (01)
  • [34] Using Machine Learning Methods to Detect Applications with Abnormal Efficiency
    Shaykhislamov, Denis
    SUPERCOMPUTING, RUSCDAYS 2016, 2016, 687 : 345 - 355
  • [35] Using machine learning to detect coronaviruses potentially infectious to humans
    Georgina Gonzalez-Isunza
    M. Zaki Jawaid
    Pengyu Liu
    Daniel L. Cox
    Mariel Vazquez
    Javier Arsuaga
    Scientific Reports, 13
  • [36] Using automated machine learning to detect kidney anomalies.
    Heard, John
    Castaneda, Peris
    Davood, Joshua
    Ahdoot, Michael
    JOURNAL OF CLINICAL ONCOLOGY, 2024, 42 (4_SUPPL) : 483 - 483
  • [37] A Framework to Detect Digital Text Using OCR Machine Learning
    Kumar, R. Arun
    Mathanagopal, V
    Kaviyarasan, R.
    Srivaratharaj, K.
    JOURNAL OF POPULATION THERAPEUTICS AND CLINICAL PHARMACOLOGY, 2023, 30 (07): : E259 - E265
  • [38] A modified framework to detect keyloggers using machine learning algorithm
    Pillai D.
    Siddavatam I.
    International Journal of Information Technology, 2019, 11 (4) : 707 - 712
  • [39] EyeScreen Development and Potential of a Novel Machine Learning Application to Detect Leukocoria
    Bernard, Alec
    Xia, Shang Zhou
    Saleh, Sahal
    Ndukwe, Tochukwu
    Meyer, Joshua
    Soloway, Elliot
    Sintayehu, Mandefro
    Ramet, Blen Teshome
    Tadegegne, Bezawit
    Nelson, Christine
    Demirci, Hakan
    OPHTHALMOLOGY SCIENCE, 2022, 2 (03):
  • [40] Machine learning assessment of myocardial ischemia using angiography: Development and retrospective validation
    Hae, Hyeonyong
    Kang, Soo-Jin
    Kim, Won-Jang
    Choi, So-Yeon
    Lee, June-Goo
    Bae, Youngoh
    Cho, Hyungjoo
    Yang, Dong Hyun
    Kang, Joon-Won
    Lim, Tae-Hwan
    Lee, Cheol Hyun
    Kang, Do-Yoon
    Lee, Pil Hyung
    Ahn, Jung-Min
    Park, Duk-Woo
    Lee, Seung-Whan
    Kim, Young-Hak
    Lee, Cheol Whan
    Park, Seong-Wook
    Park, Seung-Jung
    PLOS MEDICINE, 2018, 15 (11)