Integration of Telemedicine Consultation Into a Tertiary Radiation Oncology Department: Predictors of Use, Treatment Yield, and Effects on Patient Population.

IF 3.3 Q2 ONCOLOGY JCO Clinical Cancer Informatics Pub Date : 2024-04-01 DOI:10.1200/CCI.23.00239
Y. Sharifzadeh, William G Breen, W. S. Harmsen, A. Amundson, Allison E Garda, D. Routman, M. Waddle, Kenneth W Merrell, C. Hallemeier, Nadia N. Laack, Anantha Kollengode, Kimberly S Corbin
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Abstract

PURPOSE The COVID-19 pandemic led to rapid expansion of telemedicine. The implications of telemedicine have not been rigorously studied in radiation oncology, a procedural specialty. This study aimed to evaluate the characteristics of in-person patients (IPPs) and virtual patients (VPs) who presented to a large cancer center before and during the pandemic and to understand variables affecting likelihood of receiving radiotherapy (yield) at our institution. METHODS A total of 17,915 patients presenting for new consultation between 2019 and 2021 were included, stratified by prepandemic and pandemic periods starting March 24, 2020. Telemedicine visits included video and telephone calls. Area deprivation indices (ADIs) were also compared. RESULTS The overall population was 56% male and 93% White with mean age of 63 years. During the pandemic, VPs accounted for 21% of visits, were on average younger than their in-person (IP) counterparts (63.3 years IP v 62.4 VP), and lived further away from clinic (215 miles IP v 402 VP). Among treated VPs, living closer to clinic was associated with higher yield (odds ratio [OR], 0.95; P < .001). This was also seen among IPPs who received treatment (OR, 0.96; P < .001); however, the average distance from clinic was significantly lower for IPPs than VPs (205 miles IP v 349 VP). Specialized radiotherapy (proton and brachytherapy) was used more in VPs. IPPs had higher ADI than VPs. Among VPs, those treated had higher ADI (P < .001). CONCLUSION Patient characteristics and yield were significantly different between IPPs and VPs. Telemedicine increased reach to patients further away from clinic, including from rural or health care-deprived areas, allowing access to specialized radiation oncology care. Telemedicine has the potential to increase the reach of other technical and procedural specialties.
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将远程医疗咨询纳入三级放射肿瘤科:使用预测因素、治疗效果及对患者群体的影响。
目的COVID-19 大流行导致远程医疗迅速发展。远程医疗对放射肿瘤学这一程序性专科的影响尚未得到严格研究。本研究旨在评估在大流行之前和期间到一家大型癌症中心就诊的亲诊患者(IPPs)和虚拟患者(VPs)的特征,并了解影响在本机构接受放射治疗(产量)的可能性的变量。方法纳入了2019年至2021年期间新就诊的17915名患者,按大流行前和2020年3月24日开始的大流行期间进行分层。远程医疗就诊包括视频和电话。结果总体人群中 56% 为男性,93% 为白人,平均年龄为 63 岁。在大流行期间,自愿者占就诊人数的 21%,平均年龄比亲自就诊者(IP)更年轻(IP 为 63.3 岁,自愿者为 62.4 岁),居住地离诊所更远(IP 为 215 英里,自愿者为 402 英里)。在接受治疗的自愿者中,居住地离诊所越近,收益率越高(几率比 [OR],0.95;P < .001)。在接受治疗的 IPP 患者中也出现了这种情况(OR,0.96;P < .001);但 IPP 患者的平均诊所距离明显低于 VP 患者(IP 205 英里对 VP 349 英里)。专业放疗(质子和近距离放射治疗)在自愿接受治疗者中使用较多。IPP 的 ADI 比 VP 高。在 VPs 中,接受治疗者的 ADI 较高(P < .001)。远程医疗扩大了对距离诊所较远的患者的覆盖范围,包括农村或医疗条件较差地区的患者,使他们能够获得专业的肿瘤放射治疗。远程医疗有可能扩大其他技术和程序专科的覆盖范围。
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CiteScore
6.20
自引率
4.80%
发文量
190
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