{"id":169558,"date":"2024-06-12T02:50:56","date_gmt":"2024-06-12T06:50:56","guid":{"rendered":"https:\/\/www.immortalitymedicine.tv\/predictive-approach-for-liberation-from-acute-dialysis-in-icu-patients-using-interpretable-machine-learning-scientific-nature-com\/"},"modified":"2024-08-18T11:40:16","modified_gmt":"2024-08-18T15:40:16","slug":"predictive-approach-for-liberation-from-acute-dialysis-in-icu-patients-using-interpretable-machine-learning-scientific-nature-com","status":"publish","type":"post","link":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/machine-learning\/predictive-approach-for-liberation-from-acute-dialysis-in-icu-patients-using-interpretable-machine-learning-scientific-nature-com.php","title":{"rendered":"Predictive approach for liberation from acute dialysis in ICU patients using interpretable machine learning | Scientific &#8230; &#8211; Nature.com"},"content":{"rendered":"<p><p>    We constructed a machine-learning algorithm to forecast the    early likelihood of dialysis liberation in critically ill    patients with AKI, incorporating both the variability and    trends of dynamic parameters from routine data within the first    72h of dialysis. These models were developed,    cross-validated, and temporal tested, thus demonstrating good    discrimination in predicting renal recovery at hospital    discharge. Furthermore, we applied class weighting to address    data imbalance, used LASSO to develop models with few    variables, and predicted short time windows (the first 24 or    48h), all showing good discrimination. These results    suggest the potential clinical utility of integration into EMR    for clinical decision-support systems. Finally, using SHAP    value and PDP, we identified critical features influencing the    predictions of the model, with early vital signs and    inputs\/outputs domains being the vital drivers of the model.    Explainable machine learning-based prediction for AKI-D    recovery using existing EMR data hold potential for improving    risk stratification and gaining insights into patient outcomes.  <\/p>\n<p>    Nonrecovery of renal function after AKI-D is associated with    increased morbidity and mortality and high health care    cost25,26. Consistent with    the findings of previous epidemiology    studies1,26, the present    study showed higher short-term (3-month) and long-term (1-year)    post-discharge mortality rates for patients dependent on    dialysis compared to those liberated from acute dialysis    (Supplemental Figure S3). Early prediction of recovery from    AKI-D in critically ill patients has significant implications    regarding patient-centered care27. Currently, the    prediction solely relies on clinical experience. The most    commonly used dialysis cessation indicator is the increase in    urinary output5. However, urinary    outputs accuracy in predicting successful RRT discontinuation    remains controversial, with reported AUROCs ranging from 0.63    to 0.91 and varying cut-off values5,28. Additionally,    urinary output is typically employed as an indicator of renal    recovery later upon RRT discontinuation rather than a marker in    the early stages. Traditional functional biomarkers    (serum\/urine Cr or cystatin C) and novel biomarkers (kidney    injury molecule-1, neutrophil gelatinase-associated lipocalin,    osteopontin, tissue inhibitor of metalloprotease-2\/insulin-like    growth factor binding protein-7, proenkephalin A 119159, etc.)    have been explored as predictors of AKI-D    recovery5,8,11,27,29. Current    biomarkers for renal function recovery after AKI-D, which    require additional samples and have limited conclusive    evidence, have not been used widely to identify patients with a    high probability of renal recovery in the early stages. The    urgent need for precision guide to liberate from RRT was also    recognized in the recent Acute Dialysis Quality Initiative    (ADQI) consensus conference30. The experts    emphasized on the integration of big data analysis and single    case EMR evaluation to allow personalized RRT for every single    individual. To address this gap, there is a clinical unmet need    to integrate EMR to assess their predictive value for RRT    discontinuation and prognosis in AKI-D.  <\/p>\n<p>    Machine-learning models developed in critical nephrology can    harness the data collected in EMR for important renal outcome    predictions13,31,32. As data    accumulates, these models will also offer the additional    advantage of early prediction or enhanced accuracy. However,    validated machine-learning models for predicting acute dialysis    discontinuation in critical setting are less studied. To our    knowledge, one prior research has employed a machine-learning    approach to predict freedom from RRT in patients with AKI-D.    Pattharanitima et al. utilized the Medical Information Mart for    Intensive Care (MIMIC-III) database to predict RRT-free    survival in critically ill patients with AKI requiring    continuous renal replacement therapy (CRRT)16. Out of 684    patients, 30% had stopped from RRT successfully. Models using    81 features extracted between hospital admission and CRRT    initiation yielded AUROC values ranging 0.430.7. In our study    including 1,381 AKI-D individuals, we used 90 variables from    the initial three days post-dialysis, including all vital signs    and inputoutput records. Thus, variability and trends across    multiple time points of these data were incorporated into our    models. The prediction models in our study exhibited good    performance, with AUROC of 0.770.81 in the development cohort    and 0.820.85 in the temporal testing cohort. Aside from    candidate predictors, the differences in model performance    between our study and the prior study may also be due to    differences in the study populations character, number of    participants, and different feature window. The first three    days are considered as acute phase of ICU patients, as    exemplified by septic shock, where shock reversal often occurs    within the first 3days33. Importantly,    providing additional prognostic information after initial    intensive treatment period can aid in subsequent medical    decisions, including the consideration of clinical trials for    high-risk groups, or the potential withdrawal of    life-sustaining medical care. Moreover, we trained models at 24    and 48h in addition to the 72h model, both    maintaining good predictive performance.  <\/p>\n<p>    As shown in Table 3 and Table S6, a    proposed threshold of 0.5 for predicting renal recovery    provided good specificity, whereas a threshold of 0.3 enhanced    sensitivity. Decision curve analysis revealed the net benefits    of using these models in clinical decision-making by    considering the trade-offs between sensitivity and specificity    at various threshold probabilities. The models use would yield    more benefit than harm at both threshold of 0.5 and 0.3.    Consequently, a lower threshold, such as 0.3, allowed for the    identification of a broader subset of patients likely to    recover renal function. Meanwhile, a threshold of 0.5 resulted    in fewer false positives and would reduce alarm fatigue, a    major concern in ICU alarm systems34,35. Therefore, the    selection of a threshold in practical applications should be    based on whether a healthcare provider requires assistance in    accurately identifying patients who can recover or cannot    recover after AKI-D, while effectively managing resources.  <\/p>\n<p>    Using the interpretable machine-learning algorithm,    nonsurprisingly, the single most influential variables in renal    function recovery after initiating dialysis for AKI was urine    output. Patients who successfully liberated from RRT    demonstrated significantly higher urine output. According to    PDP (Fig.4), patients with urine    volume>1570ml over the 72h period    post-dialysis were more likely to achieve dialysis independence    at discharge. Figure4 demonstrates the PDP    of top predictors by SHAP value and the cut-off value in favor    of renal recovery. In our study, the top 20 variables include    previously well-studies factors for renal recovery, including    urine volume or BUN5,36,37, along with    less-explored variables (ex: enteral diet intake within the    first 3days after dialysis). Moreover, we categorized the    top 20 variables identified by the XGBoost model by clinical    domains, including comorbidity, vital signs, laboratory data,    Inputs\/outputs domain, and others. Besides urine volume, most    of the early predictors were related to the vital signs domain    (Fig.3B). A general    consensus exists that hemodynamic instability caused by    excessive fluid removal during dialysis hinders renal    recovery38. However,    traditional prediction models for renal recovery have often    overlooked vital signs due to their complexity and dynamic    nature. Bellomo et al. conducted a retrospective study of    critically ill patients with shock and found that higher levels    of relative hypotension during the first few hours of    vasopressor support were significantly associated with an    increased risk of adverse kidney-related    outcomes39. In line with    the current evidence, our data suggests that early vital signs,    not only the variance of systolic BP, but also SpO2, trend of    respiratory rate, were significantly associated with the renal    prognosis of critically ill patients. Additionally, the use of    LASSO model with more limited variables and the incorporation    of routinely collected laboratory data offer a practical means    of rapid integration into EMR (Supplemental Table S8). An    illustrate the interpretability of the models and the evolving    of the key features over time using two separate individuals is    presented in Supplemental Figure S4. Altogether, explainable    machine-learning models can be deconvoluted to unveil new    insights of how ICU patient features at the early stage    interact with patient future events.  <\/p>\n<p>    Strengths of our study include its size, comprising 1,381    patients with AKI-D among 26,593 ICU admissions. We also have    complete data on vital signs and inputs\/outputs with very low    missing rates (<1%). Furthermore, we linked the NHIRD    cause-of-death data to mitigate withdrawal bias risk. This is    especially important in ICU studies, as 40%60% of critically    ill patients with AKI-D have their treatment discontinued due    to life support withdrawal or death4.  <\/p>\n<p>    Our study has several limitations. First, recovery status was    determined at hospital discharge; however, we recognized that    dialysis liberation may proceed further. Nevertheless, the    median hospital stay of critically ill patients with AKI-D was    long (25.0days for the entire cohort and 30.5days    for the recovery group), with dialysis-dependent catastrophic    illness certificates verified before discharge by nephrologist    among AKI-D nonrecovers. Thus, the kidney prognosis is    clinically relevant. Second, our models made one-time early    predictions of renal recovery on the basis of data obtained    within 3days of dialysis initiation. Events after that    may drive the patient outcome away from the predictions.    Though, we developed additional models at various time horizons    (1 and 2days), a continuously updating prediction is more    appropriate for such cases. Third, limitations of our    retrospective database include lack of other predictors of    interest, including the degree of urine proteinuria, timed    creatinine clearance, and novel kidney biomarkers, which may    influence renal and patient recovery. Last, we used temporal    testing, which is considered as an in-between validation of    internal and external validation40. Although the    recovery and mortality rates in this cohort was comparable to    those reported in the literature4,26, the results    should be further validated in other settings.  <\/p>\n<p><!-- Auto Generated --><\/p>\n<p>See the original post:<br \/>\n<a target=\"_blank\" href=\"https:\/\/www.nature.com\/articles\/s41598-024-63992-y\" title=\"Predictive approach for liberation from acute dialysis in ICU patients using interpretable machine learning | Scientific ... - Nature.com\" rel=\"noopener\">Predictive approach for liberation from acute dialysis in ICU patients using interpretable machine learning | Scientific ... - Nature.com<\/a><\/p>\n","protected":false},"excerpt":{"rendered":"<p> We constructed a machine-learning algorithm to forecast the early likelihood of dialysis liberation in critically ill patients with AKI, incorporating both the variability and trends of dynamic parameters from routine data within the first 72h of dialysis. These models were developed, cross-validated, and temporal tested, thus demonstrating good discrimination in predicting renal recovery at hospital discharge <a href=\"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/machine-learning\/predictive-approach-for-liberation-from-acute-dialysis-in-icu-patients-using-interpretable-machine-learning-scientific-nature-com.php\">Continue reading <span class=\"meta-nav\">&rarr;<\/span><\/a><\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"limit_modified_date":"","last_modified_date":"","_lmt_disableupdate":"","_lmt_disable":"","footnotes":""},"categories":[1231415],"tags":[],"class_list":["post-169558","post","type-post","status-publish","format-standard","hentry","category-machine-learning"],"modified_by":null,"_links":{"self":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/posts\/169558"}],"collection":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/comments?post=169558"}],"version-history":[{"count":0,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/posts\/169558\/revisions"}],"wp:attachment":[{"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/media?parent=169558"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/categories?post=169558"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.euvolution.com\/futurist-transhuman-news-blog\/wp-json\/wp\/v2\/tags?post=169558"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}