Advancing Rheumatology Care Through Machine Learning

被引:2
|
作者
Hugle, Thomas [1 ,2 ]
机构
[1] Univ Hosp Lausanne CHUV, Dept Rheumatol, Ave Pierre Decker 4, CH-1001 Lausanne, Switzerland
[2] Univ Lausanne, Ave Pierre Decker 4, CH-1001 Lausanne, Switzerland
关键词
D O I
10.1007/s40290-024-00515-0
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
Rheumatologic diseases are marked by their complexity, involving immune-, metabolic- and mechanically mediated processes which can affect different organ systems. Despite a growing arsenal of targeted medications, many rheumatology patients fail to achieve full remission. Assessing disease activity remains challenging, as patients prioritize different symptoms and disease phenotypes vary. This is also reflected in clinical trials where the efficacy of drugs is not necessarily measured in an optimal way with the traditional outcome assessment. The recent COVID-19 pandemic has catalyzed a digital transformation in healthcare, embracing telemonitoring and patient-reported data via apps and wearables. As a further driver of digital medicine, electronic medical record (EMR) providers are actively engaged in developing algorithms for clinical decision support, heralding a shift towards patient-centered, decentralized care. Machine learning algorithms have emerged as valuable tools for handling the increasing volume of patient data, promising to enhance treatment quality and patient well-being. Convolutional neural networks (CNN) are particularly promising for radiological image analysis, aiding in the detection of specific lesions such as erosions, sacroiliitis, or osteoarthritis, with several FDA-approved applications. Clinical predictions, including numerical disease activity forecasts and medication choices, offer the potential to optimize treatment strategies. Numeric predictions can be integrated into clinical workflows, allowing for shared decision making with patients. Clustering patients based on disease characteristics provides a personalized care approach. Digital biomarkers, such as patient-reported outcomes and wearables data, offer insights into disease progression and therapy response more flexibly and outside patient consultations. In association with patient-reported outcomes, disease-specific digital biomarkers via image recognition or single-camera motion capture enables more efficient remote patient monitoring. Digital biomarkers may also play a major role in clinical trials in the future as continuous, disease-specific outcome measurement facilitating decentralized studies. Prediction models can help with patient selection in clinical trials, such as by predicting high disease activity. Efforts are underway to integrate these advancements into clinical workflows using digital pathways and remote patient monitoring platforms. In summary, machine learning, digital biomarkers, and advanced imaging technologies hold immense promise for enhancing clinical decision support and clinical trials in rheumatology. Effective integration will require a multidisciplinary approach and continued validation through prospective studies.
引用
收藏
页码:87 / 96
页数:10
相关论文
共 50 条
  • [41] Advancing cancer nanomedicine with machine learning
    Qin, Xifeng
    Lu, Tun
    Pang, Zhiqing
    ACTA PHARMACEUTICA SINICA B, 2024, 14 (09) : 4183 - 4185
  • [42] Applied machine learning and artificial intelligence in rheumatology
    Hugle, Maria
    Omoumi, Patrick
    van Laar, Jacob M.
    Boedecker, Joschka
    Hugle, Thomas
    RHEUMATOLOGY ADVANCES IN PRACTICE, 2020, 4 (01)
  • [43] Advancing Point-of-Care Testing by Application of Machine Learning Techniques and Artificial Intelligence
    Lilly, Craig M.
    V. Soni, Apurv
    Dunlap, Denise
    Hafer, Nathaniel
    Picard, Mary Ann
    Buchholz, Bryan
    Mcmanus, David D.
    CHEST, 2025, 167 (01) : 152 - 159
  • [44] Advancing polytrauma care: developing and validating machine learning models for early mortality prediction
    He, Wen
    Fu, Xianghong
    Chen, Song
    JOURNAL OF TRANSLATIONAL MEDICINE, 2023, 21 (01)
  • [45] Advancing the beneficial use of machine learning in health care and medicine: Toward a community understanding
    Nevin, Linda
    PLOS MEDICINE, 2018, 15 (11):
  • [46] Advancing polytrauma care: developing and validating machine learning models for early mortality prediction
    Wen He
    Xianghong Fu
    Song Chen
    Journal of Translational Medicine, 21
  • [47] Advancing Neurocritical Care with Artificial Intelligence and Machine Learning The Promise, Practicalities, and Pitfalls ahead
    Sharma, Rohan
    Salman, Saif
    Gu, Qiangqiang
    Freeman, William D.
    NEUROLOGIC CLINICS, 2025, 43 (01) : 153 - 165
  • [48] Advancing the understanding of cognitive impairment in MS through network measures and machine learning classification
    Jelgerhuis, Julia
    Broeders, Tommy
    Noteboom, Samantha
    Krijnen, Eva
    Fuchs, Tom A.
    Habets, Philippe
    Uitdehaag, Bernard
    Barkhof, Frederik
    Strijbis, Eva
    Schoonheim, Menno
    MULTIPLE SCLEROSIS JOURNAL, 2023, 29 : 331 - 331
  • [49] A Response to: 'Learning from the Multidisciplinary Team: Advancing Patient Care through Collaboration'
    Scannella, Vincenza
    Arulnanthy, Pirapanchen
    BRITISH JOURNAL OF HOSPITAL MEDICINE, 2024, 85 (07)
  • [50] Advancing programmable metamaterials through machine learning-driven buckling strength optimization
    Lee, Sangryun
    Kwon, Junpyo
    Kim, Hyunjun
    Ritchie, Robert O.
    Gu, Grace X.
    CURRENT OPINION IN SOLID STATE & MATERIALS SCIENCE, 2024, 31