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Validation of Clinical Dynamic Contrast-Enhanced Magnetic Resonance Imaging Perfusion Modeling and Neoadjuvant Chemotherapy Response Prediction in Breast Cancer Using 18FDG and 64Cu-DOTA-Trastuzumab Positron Emission Tomography Studies. 使用18FDG和64cu - dota -曲妥珠单抗正电子发射断层扫描研究验证临床动态磁共振成像灌注建模和乳腺癌新辅助化疗反应预测。
IF 3.3 Q2 ONCOLOGY Pub Date : 2025-01-01 Epub Date: 2025-01-14 DOI: 10.1200/CCI.23.00248
John Whitman, Vikram Adhikarla, Lusine Tumyan, Joanne Mortimer, Wei Huang, Russell Rockne, Joesph R Peterson, John Cole

Purpose: Perfusion modeling presents significant opportunities for imaging biomarker development in breast cancer but has historically been held back by the need for data beyond the clinical standard of care (SoC) and uncertainty in the interpretability of results. We aimed to design a perfusion model applicable to breast cancer SoC dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) series with results stable to low temporal resolution imaging, comparable with published results using full-resolution DCE-MRI, and correlative with orthogonal imaging modalities indicative of biophysical markers.

Methods: Subsampled high-temporal-resolution DCE-MRI series were run through our perfusion model and resulting fits were compared for consistency. The fits were also compared against previously published results from institutions using the full resolution series. The model was then evaluated on a separate cohort for validity of biomarker indications. Finally, the model was used as a fundamental part of predicting response to neoadjuvant chemotherapy (NACT).

Results: Temporally subsampled DCE-MRI series yield perfusion fit variations on the scale of 1% of the tumor median value when input frames are varied. Fits generated from pseudoclinical series are within the variation range seen between imaging sites (ρ = 0.55), voxel-wise. The model also demonstrates significant correlations with orthogonal positron emission tomography imaging, indicating potential for use as a biomarker proxy. Specifically, using the perfusion fits as the grounding for a biophysical simulation of response, we correctly predict the pathologic complete response status after NACT in 15 of 18 patients, for an accuracy of 0.83, with a specificity and sensitivity of 0.83 as well.

Conclusion: Clinical DCE-MRI data may be leveraged to provide stable perfusion fit results and indirectly interrogate the tumor microenvironment. These fits can then be used downstream for prediction of response to NACT with high accuracy.

目的:灌注建模为乳腺癌成像生物标记物的开发提供了重要机会,但由于需要临床治疗标准(SoC)以外的数据以及结果可解释性的不确定性,灌注建模一直受到阻碍。我们的目标是设计一种适用于乳腺癌SoC动态对比增强磁共振成像(DCE-MRI)系列的灌注模型,其结果稳定于低时间分辨率成像,可与已发表的使用全分辨率DCE-MRI的结果相媲美,并与指示生物物理标记的正交成像模式相关:方法:通过我们的灌注模型运行子样本高时间分辨率 DCE-MRI 序列,并比较拟合结果的一致性。还将拟合结果与使用全分辨率系列的机构之前公布的结果进行了比较。然后在一个单独的队列中对模型进行评估,以确定生物标记物适应症的有效性。最后,该模型被用作预测新辅助化疗(NACT)反应的基础部分:结果:当输入帧发生变化时,时间子取样的 DCE-MRI 序列产生的灌注拟合变化幅度为肿瘤中值的 1%。由假临床序列生成的拟合结果在不同成像部位(ρ = 0.55)之间的体素变化范围内。该模型还显示出与正交正电子发射断层成像的显著相关性,这表明该模型具有作为生物标记物替代物的潜力。具体来说,利用灌注拟合作为反应生物物理模拟的基础,我们正确预测了 18 例患者中 15 例的 NACT 后病理完全反应状态,准确率为 0.83,特异性和灵敏度也达到了 0.83:结论:临床 DCE-MRI 数据可用于提供稳定的灌注拟合结果,并间接了解肿瘤微环境。结论:临床 DCE-MRI 数据可用于提供稳定的灌注拟合结果,并间接询问肿瘤微环境,然后将这些拟合结果用于下游,以高精度预测对 NACT 的反应。
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引用次数: 0
ImpACT Project: Improving Access to Clinical Trials in Victoria, an Artificial Intelligence-Based Approach. 影响项目:改善获得临床试验在维多利亚州,人工智能为基础的方法。
IF 3.3 Q2 ONCOLOGY Pub Date : 2025-01-01 Epub Date: 2025-01-09 DOI: 10.1200/CCI.24.00137
Maria L Bechelli, Kris Ivanova, Suan Siang Tan, Beena Kumar, Dayna Swiatek, Surein Arulananda, Sue M Evans

Purpose: Enhancing the speed and efficiency of clinical trial recruitment is a key objective across international health systems. This study aimed to use artificial intelligence (AI) applied in the Victorian Cancer Registry (VCR), a population-based cancer registry, to assess (1) if VCR received all relevant pathology reports for three clinical trials, (2) AI accuracy in auto-extracting information from pathology reports for recruitment, and (3) the number of participants approached for trial enrollment using the AI approach compared with standard hospital-based recruitment.

Methods: To verify pathology report accessibility for VCR trial enrollment, reports from the laboratory were cross-referenced. To determine the accuracy of a Rapid Case Ascertainment (RCA) module of the AI software in extracting key clinical variables from the pathology report, data were compared with manually reviewed reports. To examine the effectiveness of the AI recruitment approach, the number of patients approached for recruitment was compared with standard practice.

Results: Of the 195 reports provided by the pathology laboratory, 185 (94.9%) were received by VCR, 73 of 195 (37.4%) were eligible for the studies, and 5 of 73 (6.8%) eligible cases had not been received by the VCR. The RCA module demonstrated an accuracy of 93% and an F1 score of 0.94 in extracting key clinical variables. However, the RCA false-positive rate was 10% and the false-negative rate was 5%. The standard hospital approach selected fewer cases for approach to clinical trials compared with the RCA module approach, 8 of 336 (2.4%) versus 12 of 336 (3.6%), respectively.

Conclusion: Using AI to screen potentially eligible cases for recruitment to three clinical trials resulted in a 50% increase in eligible cases being approached for enrollment.

目的:提高临床试验招募的速度和效率是整个国际卫生系统的一个关键目标。本研究旨在将人工智能(AI)应用于维多利亚癌症登记处(VCR),这是一个基于人群的癌症登记处,以评估(1)VCR是否收到了三个临床试验的所有相关病理报告,(2)人工智能在从病理报告中自动提取招募信息方面的准确性,以及(3)与标准的基于医院的招募相比,使用人工智能方法进行试验招募的参与者数量。方法:为了验证VCR试验入组时病理报告的可及性,交叉引用实验室报告。为了确定AI软件的快速病例确定(RCA)模块从病理报告中提取关键临床变量的准确性,将数据与人工审阅的报告进行比较。为了检验人工智能招募方法的有效性,将招募的患者数量与标准做法进行比较。结果:病理实验室提供的195例报告中,VCR收到185例(94.9%),195例中有73例(37.4%)符合研究条件,73例中有5例(6.8%)未被VCR收到。RCA模块在提取关键临床变量方面的准确率为93%,F1评分为0.94。RCA假阳性率为10%,假阴性率为5%。与RCA模块方法相比,标准医院方法选择临床试验方法的病例较少,336例中有8例(2.4%),336例中有12例(3.6%)。结论:使用人工智能筛选潜在的符合条件的病例,以招募到三个临床试验,可使符合条件的病例增加50%。
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引用次数: 0
Erratum: Volumetric Breast Density Estimation From Three-Dimensional Reconstructed Digital Breast Tomosynthesis Images Using Deep Learning. 勘误:使用深度学习的三维重建数字乳房断层合成图像的体积乳房密度估计。
IF 3.3 Q2 ONCOLOGY Pub Date : 2025-01-01 Epub Date: 2025-01-14 DOI: 10.1200/CCI-24-00325
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引用次数: 0
Delta-Radiomics Using Machine Learning Classifiers With Auxiliary Data Sets to Predict Disease Progression During Magnetic Resonance-Guided Radiotherapy in Adrenal Metastases.
IF 3.3 Q2 ONCOLOGY Pub Date : 2025-01-01 Epub Date: 2025-01-24 DOI: 10.1200/CCI.24.00002
Jesutofunmi A Fajemisin, John M Bryant, Payman G Saghand, Matthew N Mills, Kujtim Latifi, Eduardo G Moros, Vladimir Feygelman, Jessica M Frakes, Sarah E Hoffe, Kathryn E Mittauer, Tugce Kutuk, Rupesh Kotecha, Issam El Naqa, Stephen A Rosenberg

Purpose: Adaptive radiotherapy accounts for interfractional anatomic changes. We hypothesize that changes in the gross tumor volumes identified during daily scans could be analyzed using delta-radiomics to predict disease progression events. We evaluated whether an auxiliary data set could improve prediction performance.

Materials and methods: We analyzed 108 patients (n = 90 internal; n = 18 external) who received ablative radiotherapy. The internal data set included 42 patients with adrenal cancer, 23 patients with lung cancer, and 25 patients with pancreatic cancer, with the clinical end point of progression-free survival events. The median dose was 50 Gy, which was delivered over five fractions. The delta features are the ratio of the features of the last to first treatment fraction, F5/F1, and the concatenation of the first and last fraction features, F1||F5. Decision tree classifier with and without auxiliary data sets, and the external data set was used exclusively for independent testing of the final models.

Results: During internal training, for the F1||F5 model, the inclusion of the lung data set increased our AUC receiver operator characteristic curve (ROC) from 0.53 ± 0.12 to 0.61 ± 0.11, whereas the pancreatic data set increased our AUC-ROC to 0.60 ± 0.14. For the F5/F1 model, the inclusion of the lung auxiliary data increased our AUC-ROC from 0.52 ± 0.13 to 0.65 ± 0.11, whereas it modestly changed by 0.62 ± 0.13 with the pancreas. During external testing, for the F5/F1 model, we reported an AUC-ROC of 0.60 with the lung auxiliary data and 0.43 with the pancreatic data. Also, for the F5||F1 model, we reported an AUC-ROC of 0.70 with the lung auxiliary and 0.60 with the pancreatic data.

Conclusion: Decision trees provided an explainable model on the external data set. The validation of our model on an external data set may be the first step to biologically adapted radiotherapy recognizing radiomics signals for potential recurrence.

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引用次数: 0
Evaluating Cancer Screening in the Era of Advanced Causal Inference Methods: Innovation, Adherence, and Health Equity Considerations. 在先进的因果推理方法时代评估癌症筛查:创新、坚持和健康公平考虑。
IF 3.3 Q2 ONCOLOGY Pub Date : 2025-01-01 Epub Date: 2025-01-10 DOI: 10.1200/CCI-24-00214
Rebecca A Miksad, Somnath Sarkar
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引用次数: 0
Development and Validation of Emoji Response Scales for Assessing Patient-Reported Outcomes. 用于评估患者报告结果的表情符号反应量表的开发和验证。
IF 3.3 Q2 ONCOLOGY Pub Date : 2025-01-01 Epub Date: 2025-01-07 DOI: 10.1200/CCI-24-00148
Carrie A Thompson, Paul J Novotny, Kathleen Yost, Alicia C Bartz, Lauren Rogak, Amylou C Dueck

Purpose: Emoji are digital images or icons used to express an idea or emotion in electronic communication. The purpose of this study was to develop and evaluate the psychometric properties of two patient-reported scales that incorporate emoji.

Methods: The Emoji Response Scale developed for this study has two parts: the Emoji-Ordinal and Emoji-Mood scales. A pilot study was designed to validate the ordinal nature of the Emoji-Ordinal Scale. Twenty patients were shown all possible pairs of five emoji and asked to select the most positive from each pair. The psychometric ordering was assessed using Coombs unfolding and Thurstone scaling. A separate pilot study was designed to determine which emoji to include in the Emoji-Mood Scale. Ten common feelings experienced by patients with cancer were chosen by the study team. Patients and providers were asked to select the one emoji that best represented each feeling from the selection. The most commonly selected emotions and representative emoji were chosen for the Emoji-Mood Scale. In a randomized study of 294 patients, Spearman correlations, Wilcoxon tests, and Bland-Altman analyses determined the construct validity of the scales compared with Linear Analog Scale Assessments (LASA) and Patient-Reported Outcomes Measurement Information System (PROMIS) scores.

Results: Ninety-five percent of patients selected the same ordering among the ordinal emoji, and Thurstone scaling confirmed the ordinal nature of the response scale. The construct validity of the scales was high with correlations between the Emoji-Ordinal Scale and the LASA scale of 0.70 for emotional well-being, 0.72 for physical well-being, 0.74 for overall quality of life, and -0.81 for fatigue. Emoji-Mood Scale ratings were strongly related to PROMIS global mental, global physical, fatigue, anxiety, sleep disturbance, and social activity scales (P < .0001).

Conclusion: This study provides evidence that scales incorporating emoji are valid for collecting patient-reported outcomes.

目的:表情符号是在电子交流中用来表达思想或情感的数字图像或图标。本研究的目的是开发和评估两种包含表情符号的患者报告量表的心理测量特性。方法:本研究开发的表情符号反应量表分为Emoji- ordinal和Emoji- mood两部分。一项初步研究旨在验证表情符号-顺序量表的序性。研究人员向20名患者展示了5个表情符号的所有可能组合,并要求他们从每对表情符号中选出最积极的一个。采用Coombs展开法和Thurstone量表评估心理测量的排序。另一项独立的试点研究旨在确定表情表情情绪量表中包含哪些表情符号。研究小组选择了癌症患者的十种常见感受。患者和医疗服务提供者被要求从选择中选择一个最能代表每种感觉的表情符号。最常被选择的情绪和代表性的表情符号被选为表情-情绪量表。在一项294例患者的随机研究中,Spearman相关性、Wilcoxon检验和Bland-Altman分析确定了量表与线性模拟量表评估(LASA)和患者报告结果测量信息系统(PROMIS)评分相比的结构效度。结果:95%的患者在有序表情符号中选择了相同的顺序,Thurstone量表证实了反应量表的序数性质。Emoji-Ordinal量表与LASA量表的结构效度较高,情绪幸福感为0.70,身体幸福感为0.72,整体生活质量为0.74,疲劳度为-0.81。Emoji-Mood量表评分与PROMIS整体心理、整体身体、疲劳、焦虑、睡眠障碍和社会活动量表密切相关(P < 0.0001)。结论:本研究提供的证据表明,包含表情符号的量表对于收集患者报告的结果是有效的。
{"title":"Development and Validation of Emoji Response Scales for Assessing Patient-Reported Outcomes.","authors":"Carrie A Thompson, Paul J Novotny, Kathleen Yost, Alicia C Bartz, Lauren Rogak, Amylou C Dueck","doi":"10.1200/CCI-24-00148","DOIUrl":"https://doi.org/10.1200/CCI-24-00148","url":null,"abstract":"<p><strong>Purpose: </strong>Emoji are digital images or icons used to express an idea or emotion in electronic communication. The purpose of this study was to develop and evaluate the psychometric properties of two patient-reported scales that incorporate emoji.</p><p><strong>Methods: </strong>The Emoji Response Scale developed for this study has two parts: the Emoji-Ordinal and Emoji-Mood scales. A pilot study was designed to validate the ordinal nature of the Emoji-Ordinal Scale. Twenty patients were shown all possible pairs of five emoji and asked to select the most positive from each pair. The psychometric ordering was assessed using Coombs unfolding and Thurstone scaling. A separate pilot study was designed to determine which emoji to include in the Emoji-Mood Scale. Ten common feelings experienced by patients with cancer were chosen by the study team. Patients and providers were asked to select the one emoji that best represented each feeling from the selection. The most commonly selected emotions and representative emoji were chosen for the Emoji-Mood Scale. In a randomized study of 294 patients, Spearman correlations, Wilcoxon tests, and Bland-Altman analyses determined the construct validity of the scales compared with Linear Analog Scale Assessments (LASA) and Patient-Reported Outcomes Measurement Information System (PROMIS) scores.</p><p><strong>Results: </strong>Ninety-five percent of patients selected the same ordering among the ordinal emoji, and Thurstone scaling confirmed the ordinal nature of the response scale. The construct validity of the scales was high with correlations between the Emoji-Ordinal Scale and the LASA scale of 0.70 for emotional well-being, 0.72 for physical well-being, 0.74 for overall quality of life, and -0.81 for fatigue. Emoji-Mood Scale ratings were strongly related to PROMIS global mental, global physical, fatigue, anxiety, sleep disturbance, and social activity scales (<i>P</i> < .0001).</p><p><strong>Conclusion: </strong>This study provides evidence that scales incorporating emoji are valid for collecting patient-reported outcomes.</p>","PeriodicalId":51626,"journal":{"name":"JCO Clinical Cancer Informatics","volume":"9 ","pages":"e2400148"},"PeriodicalIF":3.3,"publicationDate":"2025-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"142958610","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Feasibility and Acceptability of Collecting Passive Smartphone Data for Potential Use in Digital Phenotyping Among Family Caregivers and Patients With Advanced Cancer. 收集被动智能手机数据用于家庭护理人员和晚期癌症患者数字表型分析的可行性和可接受性。
IF 3.3 Q2 ONCOLOGY Pub Date : 2025-01-01 Epub Date: 2025-01-02 DOI: 10.1200/CCI-24-00201
J Nicholas Odom, Kyungmi Lee, Erin R Currie, Kristen Allen-Watts, Erin R Harrell, Avery C Bechthold, Sally Engler, Kayleigh Curry, Arif H Kamal, Christine S Ritchie, George Demiris, Alexi A Wright, Marie A Bakitas, Andres Azuero

Purpose: Modeling passively collected smartphone sensor data (called digital phenotyping) has the potential to detect distress among family caregivers and patients with advanced cancer and could lead to novel clinical models of cancer care. The purpose of this study was to assess the feasibility and acceptability of collecting passive smartphone data from family caregivers and their care recipients with advanced cancer over 24 weeks.

Methods: This was an observational feasibility study. Family caregivers and patients with advanced cancer were recruited through clinic or via social media and downloaded a digital phenotyping application (Beiwe) to their smartphones that passively collected sensor data over 24 weeks. Feasibility was evaluated by quantifying enrollment and retention and the quantity of acquired data. Acceptability was assessed through post-24 week qualitative interviews.

Results: Of 178 caregiver and patient dyads approached, 22.5% of caregivers (n = 40) and 10.1% of patients (n = 18) both consented to the study and successfully downloaded the application, with most recruited through social media (93%). Of 24 weeks (168 days), the median number of days that data were received was 141 days. Interviews yielded three themes: (1) experiences with study procedures were generally positive despite some technical challenges; (2) security and privacy concerns were minimal, mitigated by clear explanations, trust in the health care system, and privacy norms; and (3) a clinical model that used passive smartphone monitoring to automatically trigger assistance could be beneficial but with concern about false alarms.

Conclusion: This pilot study of collecting passive smartphone data found mixed indicators of feasibility, with suboptimal enrollment rates, particularly via clinic, but positive retention and data collection rates for those who did enroll. Participants had generally positive views of passive monitoring.

目的:对被动收集的智能手机传感器数据(称为数字表型)进行建模,有可能发现家庭照顾者和晚期癌症患者的痛苦,并可能导致癌症护理的新型临床模型。本研究的目的是评估从患有晚期癌症的家庭照顾者及其照顾者收集24周以上被动智能手机数据的可行性和可接受性。方法:观察性可行性研究。通过诊所或社交媒体招募家庭护理人员和晚期癌症患者,并将数字表型应用程序(Beiwe)下载到他们的智能手机中,该应用程序在24周内被动收集传感器数据。通过量化入学人数和保留率以及获得的数据量来评估可行性。通过24周后的定性访谈评估可接受性。结果:在接触的178对护理人员和患者中,22.5%的护理人员(n = 40)和10.1%的患者(n = 18)都同意这项研究并成功下载了应用程序,其中大多数是通过社交媒体招募的(93%)。在24周(168天)中,收到数据的中位数天数为141天。访谈产生了三个主题:(1)尽管存在一些技术挑战,但研究过程的经验总体上是积极的;(2)安全和隐私问题最小,通过清晰的解释、对医疗保健系统的信任和隐私规范来缓解;(3)使用被动智能手机监测自动触发援助的临床模型可能是有益的,但要注意虚报。结论:这项收集被动智能手机数据的试点研究发现,可行性指标好坏参半,注册率不理想,特别是通过诊所,但注册者的留存率和数据收集率是积极的。参与者普遍对被动监控持积极态度。
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引用次数: 0
Explainable Machine Learning to Predict Treatment Response in Advanced Non-Small Cell Lung Cancer. 可解释的机器学习预测晚期非小细胞肺癌的治疗反应。
IF 3.3 Q2 ONCOLOGY Pub Date : 2025-01-01 Epub Date: 2025-01-03 DOI: 10.1200/CCI-24-00157
Vinayak S Ahluwalia, Ravi B Parikh

Purpose: Immune checkpoint inhibitors (ICIs) have demonstrated promise in the treatment of various cancers. Single-drug ICI therapy (immuno-oncology [IO] monotherapy) that targets PD-L1 is the standard of care in patients with advanced non-small cell lung cancer (NSCLC) with PD-L1 expression ≥50%. We sought to find out if a machine learning (ML) algorithm can perform better as a predictive biomarker than PD-L1 alone.

Methods: Using a real-world, nationwide electronic health record-derived deidentified database of 38,048 patients with advanced NSCLC, we trained binary prediction algorithms to predict likelihood of 12-month progression-free survival (PFS; 12-month PFS) and 12-month overall survival (OS; 12-month OS) from initiation of first-line therapy. We evaluated the algorithms by calculating the AUC on the test set. We plotted Kaplan-Meier curves and fit Cox survival models comparing survival between patients who were classified as low-risk (LR) for 12-month disease progression or 12-month mortality versus those classified as high-risk.

Results: The ML algorithms achieved an AUC of 0.701 (95% CI, 0.689 to 0.714) and 0.718 (95% CI, 0.707 to 0.730) for 12-month PFS and 12-month OS, respectively. Patients in the LR group had lower 12-month disease progression (hazard ratio [HR], 0.47 [95% CI, 0.45 to 0.50]; P < .001) and 12-month all-cause mortality (HR, 0.31 [95% CI, 0.29 to 0.34]; P < .0001) compared with the high-risk group. Patients deemed LR for disease progression and mortality on IO monotherapy were less likely to progress (HR, 0.53 [95% CI, 0.46 to 0.61]; P < .0001) or die (HR, 0.30 [95% CI, 0.24 to 0.37]; P < .001) compared with the high-risk group.

Conclusion: An ML algorithm can more accurately predict response to first-line therapy, including IO monotherapy, in patients with advanced NSCLC, compared with PD-L1 alone. ML may better aid clinical decision making in oncology than a single biomarker.

目的:免疫检查点抑制剂(ICIs)在治疗各种癌症方面已经显示出前景。靶向PD-L1的单药ICI治疗(免疫肿瘤学[IO]单药治疗)是PD-L1表达≥50%的晚期非小细胞肺癌(NSCLC)患者的标准治疗方案。我们试图找出机器学习(ML)算法是否可以比单独使用PD-L1更好地作为预测性生物标志物。方法:使用真实世界的全国性电子健康记录衍生的未识别数据库,包括38,048例晚期非小细胞肺癌患者,我们训练二元预测算法来预测12个月无进展生存(PFS;12个月PFS)和12个月总生存期(OS;开始一线治疗后12个月(OS)。我们通过计算测试集上的AUC来评估算法。我们绘制Kaplan-Meier曲线并拟合Cox生存模型,比较低危(LR)患者12个月疾病进展或12个月死亡率与高危患者的生存率。结果:ML算法的12个月PFS和12个月OS的AUC分别为0.701 (95% CI, 0.689至0.714)和0.718 (95% CI, 0.707至0.730)。LR组患者12个月的疾病进展较低(风险比[HR], 0.47 [95% CI, 0.45 ~ 0.50];P < 0.001)和12个月全因死亡率(HR, 0.31 [95% CI, 0.29 ~ 0.34];P < 0.0001)。经IO单药治疗认为疾病进展为LR的患者和死亡率进展的可能性较小(HR, 0.53 [95% CI, 0.46至0.61];P < 0.0001)或死亡(HR, 0.30 [95% CI, 0.24 ~ 0.37];P < 0.001)。结论:与单独使用PD-L1相比,ML算法可以更准确地预测晚期NSCLC患者对一线治疗(包括IO单药治疗)的反应。ML可能比单一的生物标志物更有助于肿瘤学的临床决策。
{"title":"Explainable Machine Learning to Predict Treatment Response in Advanced Non-Small Cell Lung Cancer.","authors":"Vinayak S Ahluwalia, Ravi B Parikh","doi":"10.1200/CCI-24-00157","DOIUrl":"10.1200/CCI-24-00157","url":null,"abstract":"<p><strong>Purpose: </strong>Immune checkpoint inhibitors (ICIs) have demonstrated promise in the treatment of various cancers. Single-drug ICI therapy (immuno-oncology [IO] monotherapy) that targets PD-L1 is the standard of care in patients with advanced non-small cell lung cancer (NSCLC) with PD-L1 expression ≥50%. We sought to find out if a machine learning (ML) algorithm can perform better as a predictive biomarker than PD-L1 alone.</p><p><strong>Methods: </strong>Using a real-world, nationwide electronic health record-derived deidentified database of 38,048 patients with advanced NSCLC, we trained binary prediction algorithms to predict likelihood of 12-month progression-free survival (PFS; 12-month PFS) and 12-month overall survival (OS; 12-month OS) from initiation of first-line therapy. We evaluated the algorithms by calculating the AUC on the test set. We plotted Kaplan-Meier curves and fit Cox survival models comparing survival between patients who were classified as low-risk (LR) for 12-month disease progression or 12-month mortality versus those classified as high-risk.</p><p><strong>Results: </strong>The ML algorithms achieved an AUC of 0.701 (95% CI, 0.689 to 0.714) and 0.718 (95% CI, 0.707 to 0.730) for 12-month PFS and 12-month OS, respectively. Patients in the LR group had lower 12-month disease progression (hazard ratio [HR], 0.47 [95% CI, 0.45 to 0.50]; <i>P</i> < .001) and 12-month all-cause mortality (HR, 0.31 [95% CI, 0.29 to 0.34]; <i>P</i> < .0001) compared with the high-risk group. Patients deemed LR for disease progression and mortality on IO monotherapy were less likely to progress (HR, 0.53 [95% CI, 0.46 to 0.61]; <i>P</i> < .0001) or die (HR, 0.30 [95% CI, 0.24 to 0.37]; <i>P</i> < .001) compared with the high-risk group.</p><p><strong>Conclusion: </strong>An ML algorithm can more accurately predict response to first-line therapy, including IO monotherapy, in patients with advanced NSCLC, compared with PD-L1 alone. ML may better aid clinical decision making in oncology than a single biomarker.</p>","PeriodicalId":51626,"journal":{"name":"JCO Clinical Cancer Informatics","volume":"9 ","pages":"e2400157"},"PeriodicalIF":3.3,"publicationDate":"2025-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11706357/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"142928576","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Provision of Radiology Reports Simplified With Large Language Models to Patients With Cancer: Impact on Patient Satisfaction.
IF 3.3 Q2 ONCOLOGY Pub Date : 2025-01-01 Epub Date: 2025-01-29 DOI: 10.1200/CCI-24-00166
Amit Gupta, Swarndeep Singh, Hema Malhotra, Himanshu Pruthi, Aparna Sharma, Amit K Garg, Mukesh Yadav, Devasenathipathy Kandasamy, Atul Batra, Krithika Rangarajan

Purpose: To explore the perceived utility and effect of simplified radiology reports on oncology patients' knowledge and feasibility of large language models (LLMs) to generate such reports.

Materials and methods: This study was approved by the Institute Ethics Committee. In phase I, five state-of-the-art LLMs (Generative Pre-Trained Transformer-4o [GPT-4o], Google Gemini, Claude Opus, Llama-3.1-8B, and Phi-3.5-mini) were tested to simplify 50 oncology computed tomography (CT) report impressions using five distinct prompts with each LLM. The outputs were evaluated quantitatively using readability indices. Five LLM-prompt combinations with best average readability scores were also assessed qualitatively, and the best LLM-prompt combination was selected. In phase II, 100 consecutive oncology patients were randomly assigned into two groups: original report (received original report impression) and simplified report (received LLM-generated simplified versions of their CT report impressions under the supervision of a radiologist). A questionnaire assessed the impact of these reports on patients' knowledge and perceived utility.

Results: In phase I, Claude Opus-Prompt 3 (explain to a 15-year-old) performed slightly better than other LLMs, although scores for GPT-4o, Gemini, Claude Opus, and Llama-3.1 were not significantly different (P > .0033 on Wilcoxon signed-rank test with Bonferroni correction). In phase II, simplified report group patients demonstrated significantly better knowledge of primary site and extent of their disease as well as showed significantly higher confidence and understanding of the report (P < .05 for all). Only three (of 50) simplified reports required corrections by the radiologist.

Conclusion: Simplified radiology reports significantly enhanced patients' understanding and confidence in comprehending their medical condition. LLMs performed very well at this simplification task; therefore, they can be potentially used for this purpose, although there remains a need for human oversight.

{"title":"Provision of Radiology Reports Simplified With Large Language Models to Patients With Cancer: Impact on Patient Satisfaction.","authors":"Amit Gupta, Swarndeep Singh, Hema Malhotra, Himanshu Pruthi, Aparna Sharma, Amit K Garg, Mukesh Yadav, Devasenathipathy Kandasamy, Atul Batra, Krithika Rangarajan","doi":"10.1200/CCI-24-00166","DOIUrl":"https://doi.org/10.1200/CCI-24-00166","url":null,"abstract":"<p><strong>Purpose: </strong>To explore the perceived utility and effect of simplified radiology reports on oncology patients' knowledge and feasibility of large language models (LLMs) to generate such reports.</p><p><strong>Materials and methods: </strong>This study was approved by the Institute Ethics Committee. In phase I, five state-of-the-art LLMs (Generative Pre-Trained Transformer-4o [GPT-4o], Google Gemini, Claude Opus, Llama-3.1-8B, and Phi-3.5-mini) were tested to simplify 50 oncology computed tomography (CT) report impressions using five distinct prompts with each LLM. The outputs were evaluated quantitatively using readability indices. Five LLM-prompt combinations with best average readability scores were also assessed qualitatively, and the best LLM-prompt combination was selected. In phase II, 100 consecutive oncology patients were randomly assigned into two groups: original report (received original report impression) and simplified report (received LLM-generated simplified versions of their CT report impressions under the supervision of a radiologist). A questionnaire assessed the impact of these reports on patients' knowledge and perceived utility.</p><p><strong>Results: </strong>In phase I, Claude Opus-Prompt 3 (explain to a 15-year-old) performed slightly better than other LLMs, although scores for GPT-4o, Gemini, Claude Opus, and Llama-3.1 were not significantly different (<i>P</i> > .0033 on Wilcoxon signed-rank test with Bonferroni correction). In phase II, simplified report group patients demonstrated significantly better knowledge of primary site and extent of their disease as well as showed significantly higher confidence and understanding of the report (<i>P</i> < .05 for all). Only three (of 50) simplified reports required corrections by the radiologist.</p><p><strong>Conclusion: </strong>Simplified radiology reports significantly enhanced patients' understanding and confidence in comprehending their medical condition. LLMs performed very well at this simplification task; therefore, they can be potentially used for this purpose, although there remains a need for human oversight.</p>","PeriodicalId":51626,"journal":{"name":"JCO Clinical Cancer Informatics","volume":"9 ","pages":"e2400166"},"PeriodicalIF":3.3,"publicationDate":"2025-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"143069590","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Toward a Computable Phenotype for Determining Eligibility of Lung Cancer Screening Using Electronic Health Records. 利用电子健康记录确定肺癌筛查合格性的可计算表型
IF 3.3 Q2 ONCOLOGY Pub Date : 2025-01-01 Epub Date: 2025-01-16 DOI: 10.1200/CCI.24.00139
Shuang Yang, Yu Huang, Xiwei Lou, Tianchen Lyu, Ruoqi Wei, Hiren J Mehta, Yonghui Wu, Michelle Alvarado, Ramzi G Salloum, Dejana Braithwaite, Jinhai Huo, Ya-Chen Tina Shih, Yi Guo, Jiang Bian

Purpose: Lung cancer screening (LCS) has the potential to reduce mortality and detect lung cancer at its early stages, but the high false-positive rate associated with low-dose computed tomography (LDCT) for LCS acts as a barrier to its widespread adoption. This study aims to develop computable phenotype (CP) algorithms on the basis of electronic health records (EHRs) to identify individual's eligibility for LCS, thereby enhancing LCS utilization in real-world settings.

Materials and methods: The study cohort included 5,778 individuals who underwent LDCT for LCS from 2012 to 2022, as recorded in the University of Florida Health Integrated Data Repository. CP rules derived from LCS guidelines were used to identify potential candidates, incorporating both structured EHR and clinical notes analyzed via natural language processing. We then conducted manual reviews of 453 randomly selected charts to refine and validate these rules, assessing CP performance using metrics, for example, F1 score, specificity, and sensitivity.

Results: We developed an optimal CP rule that integrates both structured and unstructured data, adhering to the US Preventive Services Task Force 2013 and 2020 guidelines. This rule focuses on age (55-80 years for 2013 and 50-80 years for 2020), smoking status (current, former, and others), and pack-years (≥30 for 2013 and ≥20 for 2020), achieving F1 scores of 0.75 and 0.84 for the respective guidelines. Including unstructured data improved the F1 score performance by up to 9.2% for 2013 and 12.9% for 2020, compared with using structured data alone.

Conclusion: Our findings underscore the critical need for improved documentation of smoking information in EHRs, demonstrate the value of artificial intelligence techniques in enhancing CP performance, and confirm the effectiveness of EHR-based CP in identifying LCS-eligible individuals. This supports its potential to aid clinical decision making and optimize patient care.

目的:肺癌筛查(LCS)具有降低死亡率和早期发现肺癌的潜力,但低剂量计算机断层扫描(LDCT)对LCS的高假阳性率是其广泛采用的障碍。本研究旨在开发基于电子健康记录(EHRs)的可计算表型(CP)算法,以确定个人是否有资格使用LCS,从而提高LCS在现实环境中的应用。材料和方法:研究队列包括5,778名在2012年至2022年期间接受LDCT治疗LCS的个体,记录在佛罗里达大学健康综合数据库中。来自LCS指南的CP规则用于识别潜在的候选人,结合结构化的电子病历和通过自然语言处理分析的临床记录。然后,我们对453个随机选择的图表进行了人工审查,以完善和验证这些规则,使用指标评估CP的表现,例如F1评分、特异性和敏感性。结果:我们开发了一个优化的CP规则,集成了结构化和非结构化数据,符合美国预防服务工作组2013年和2020年的指南。该规则侧重于年龄(2013年55-80岁,2020年50-80岁),吸烟状况(现在,以前和其他)和包龄(2013年≥30岁,2020年≥20岁),分别达到0.75和0.84的F1分数。与单独使用结构化数据相比,包含非结构化数据的F1成绩在2013年和2020年分别提高了9.2%和12.9%。结论:我们的研究结果强调了改善电子病历中吸烟信息记录的迫切需要,证明了人工智能技术在提高CP绩效方面的价值,并证实了基于电子病历的CP在识别lcs合格个体方面的有效性。这支持了它帮助临床决策和优化患者护理的潜力。
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JCO Clinical Cancer Informatics
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